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Africa Region Working Paper Series No. 95 South Africa’s Export Performance: Determinants of Export supply by Lawrence Edwards and Phil Alves School of Economics University of Cape Town DECEMBER 2005 35656 Public Disclosure Authorized Public Disclosure Authorized Public Disclosure Authorized Public Disclosure Authorized Public Disclosure Authorized Public Disclosure Authorized Public Disclosure Authorized Public Disclosure Authorized

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Africa Region Working Paper Series No. 95

South Africa’s Export Performance:

Determinants of Export supply

by

Lawrence Edwards and Phil Alves

School of Economics

University of Cape Town

DECEMBER 2005

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Africa Region Working Paper Series No. 95

December 2005

Abstract

This paper is a result of a wider policy research and knowledge work on growth and jobs issues in South Africa, which the Bank promotes in collaboration with leading South African researchers. The objective is to contribute to major economic and policy issues facing South Africa as it embarks on the second decade of its remarkable democratic transition. These issues include growth and jobs, export competitiveness, service delivery, small and medium-size enterprise development and investment climate, industrial concentration, infrastructure and growth, municipal and financial management, land reform, regional integration, trade and poverty, HIV/AIDS, and––especially important––service delivery.

The paper provides three principal results. First, it evaluates the extent to which the composition and level of manufacturing exports have responded to reform initiatives in the 1990s and finds that the successes of these policies in generating export growth have been mixed; the inability to re-structure exports towards dynamic, high-technology products is one explanation for the relatively poor export performance of South African manufacturing during the 1990s. Second, the paper investigates the determinants of South African manufacturing export performance using estimated export supply and demand functions; it shows that South African manufacturers are on average price-takers in the international market and that exports are predominantly supply driven. And third, the paper finds that export growth is constrained by factors that affect the profitability of exports; real effective exchange rate, infrastructure costs, tariff rates and skilled labour are found to be important determinants of export supply.

The Africa Region Working Paper Series expedites dissemination of applied research and policy studies with potential for improving economic performance and social conditions in Sub-Saharan Africa. The series publishes papers at preliminary stages to stimulate timely discussions within the Region and among client countries, donors, and the policy research community. The editorial board for the series consists of representatives from professional families appointed by the Region’s Sector Directors. For additional information, please contact Momar Gueye, (82220), Email: [email protected] or visit the Web Site: http://www.worldbank.org/afr/wps/index.htm.

The findings, interpretations, and conclusions in this paper are those of the

authors. They do not necessarily represent the views of the World Bank, its Executive Directors, or the countries that they represent and should not be attributed to them.

Authors’Affiliation and Sponsorship

Authors: (1) Lawrence Edwards, Professor of Economics, School of Economics, Cape Town University, South Africa, Consultant, The World Bank.

(2) Phil Alves, School of Economics, Cape Town University, South Africa, Consultant, The World Bank.

Sponsor and Editor: Željko Bogetić, Lead Economist, AFTP1, The World Bank. [email protected]

FOREWORD

This paper is a result of a wider policy research and knowledge work on growth and jobs issues in South Africa, which the Bank promotes in collaboration with leading South African researchers. The objective is to contribute to major economic and policy issues facing South Africa as it embarks on the second decade of its remarkable democratic transition. These issues include growth and jobs, export competitiveness, service delivery, small and medium-size enterprise development and investment climate, industrial concentration, infrastructure and growth, municipal and financial management, land reform, regional integration, trade and poverty, HIV/AIDS, and––especially important––service delivery. It is hoped that dissemination of papers such as this will contribute to a wider exchange of ideas on policy and development experiences both within South Africa and across the African countries. Such knowledge work is key to understanding complex development issues and dilemmas confronting the policymakers. It is also a necessary ingredient in promoting sound policies and economic growth in the region.

Ritva Reinikka

Country Director

Botswana, Lesotho, Namibia, South Africa, Swaziland

The World Bank

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South Africa’s Export Performance:

Determinants of Export supply

By

Lawrence Edwards and Phil Alves*

1. Introduction

In 1994, the new democratically elected government inherited an economic system characterised by declining economic and employment growth. In response to these pressures, the government initiated a number of policy reforms to stimulate growth, employment and redistribution. The macroeconomic reforms were encapsulated in the Growth, Employment and Redistribution macroeconomic policy (GEAR) strategy. In addition to encouraging growth and employment, this strategy aimed to transform South Africa into a “competitive, outward orientated economy” (RSA, 1996). Measures to reduce unit costs and an exchange rate policy to keep the real effective exchange rate stable at a competitive level formed key components of this strategy. To differentiate itself from the previous protectionist government, the new government also embarked upon an ambition trade liberalisation process that commenced with the government’s formal Offer in the 1995 WTO (Bell, 1997). Numerous other policy changes relating to labour markets and competition have also been implemented.

This paper evaluates the extent to which the composition and level of

manufacturing exports have responded to these initiatives in the 1990s. We find that the successes of these policies in generating export growth have been mixed. Exports of manufactures have increased but not by enough to generate an export-led growth boom similar to those of East Asia and a few other resource-based export economies. Moreover, South African manufactured exports remain resource-based and the country has lagged others in diversifying into new and fast growing export sectors. The inability to re-structure exports towards these dynamic high technology products is one explanation for the relatively poor export performance of South African manufacturing during the 1990s.

* School of Economics, Cape Town University, South Africa. The paper was edited by Željko Bogetić, Lead Economist, AFTP1, The World Bank.

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The paper also investigates the determinants of South African manufacturing export performance using estimated export supply and demand functions. The analysis finds that South African manufacturers are on average price-takers in the international market and that exports are predominantly supply driven. Export growth is therefore not predominantly dependent on the economic prosperity of South Africa’s trading partners or on their ability to compete in the export market on the basis of price.

Furthermore, the paper finds that many of the constraints to export growth can be found in factors that negatively affect the profitability of export supply. The real effective exchange rate, infrastructure costs, tariff rates and skilled labour are found to be important determinants of export supply.

Section 2 of the paper presents a very brief review of South Africa’s trade regime, the increased openness in the 1990s, the changing composition of South Africa’s exports, and its dynamic export performance in comparative perspective. Section 3 develops the export model used to identify the determinants of export performance and then discusses the results. Section 4 contains concluding remarks and some policy implications.

2. South African Trade regime and Trade Patterns During the 1990s

This section consists of three components. Progress made in liberalising the

economy is first discussed. This is then followed by an analysis of the changing patterns of South Africa’s exports from the 1970s. Finally, South Africa’s dynamic export performance during the 1990s is assessed relative to a range of developing and natural resource-based economies.

Trade liberalisation in the 1990s The democratically elected government in 1994 inherited a protectionist

trade regime characterised by high levels of protection, a wide dispersion of tariffs, and a complicated array of tariff types (Belli et al., 1993). The protective trade regime arose from a policy of import substitution industrialisation that began in the 1920s with the substitution of imports of consumer goods by domestic manufactures, but then shifted in the 1970s and 1980s towards import replacement in downstream industries, particularly the chemical and basic metals sub-sectors.

Although some initiatives had been made in opening the economy from

the 1970s (Export Development Assistance scheme in 1970s, General Export Incentive Scheme in 1990 and the relaxation of quantitative restrictions), reform of the trade regime accelerated with South Africa’s formal Offer in 1995 to the WTO. In this Offer South Africa agreed to bind 98% of all tariff lines, reduce the

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number of tariff rates to six, to rationalise the over 12000 tariff lines and to replace quantitative restrictions on agricultural products with tariffs.1

Substantial progress has been made in simplifying the tariff structure of

the early 1990s, but further progress can be made. The total number of HS8-digit tariff lines fell from over 11200 in 1994 to 6707 in 2004. The tariff structure has also been simplified with the number of HS8-digit lines bearing formula, mixed or specific duties declining from 3524 in 1994 (30% of total) to 205 in 2004 (3% of total), although almost half of this reduction took place between 2003 and 2004. The number of ad valorem tariff rates also remains high (37 in 2004 vs. 31 in 1994) and exceeds the 6 tariff rates proposed in South Africa’s GATT/WTO Uruguay Round offer. If non-ad valorem tariff rates are included, the number of different rates in 2004 rises to 99.2 Therefore, there is further scope to simplify the tariff structure as per the Offer to the WTO.

Average nominal and effective protection rates have also fallen. The

simple average Most Favoured Nation (MFN) tariff rate, inclusive of surcharges, fell from 22% in 1994 to 11.3% in 2003 (Figure 1), although most of this decline occurred prior to 2000.3 4 Since 2000, tariff rates facing EU and SADC countries have also fallen in accordance with the SA-EU Free Trade Agreement (2000) and the SADC Free Trade Protocol (1996), reaching 9.7% and 5.1% in 2003, respectively. Average effective rates of protection (ERP) have also fallen, but remain high, particularly in manufacturing where they averaged 25% in 2003 (Table 1).5 Further simplifications of the tariff structure initiated in early 2004 have led to addition reductions in average tariff rates facing MFN (8.3%), EU (7.1%) and SADC (2.4%) countries.6

1 This is a very cursory overview of the liberalisation process, which has been heavily debated in the South African context. For more detailed discussions see Holden (1992), Belli et al. (1993), Bell (1997), Jenkins et al. (1997), Fedderke and Vase (2001, 2004) and Rangasamy and Harmse (2004).

2 The number of rates in 1990 and 1994 were 733 and 717, respectively. 3 These rates include ad valorem equivalents of formula, specific, compound and mixed duties and are

based on HS8-digit tariff lines. Duty collection rates are used to calculate the ad valorem equivalents. See Edwards and van de Winkel (2005) for further details.

4 The decline in average nominal protection in South Africa has been marginally higher than reductions in other developing economies, but this has not significantly affected its ranking (43-44 percentile) in terms of tariff levels.

5 ERP are calculated as ∑∑

−=

iij

iiijj

j a

tatERP

1 where tj is the tariff on outputs, ti is the tariff on inputs

and aij is the quantity of intermediate input i used in the production of one unit of j. The Balassa (1965) approach is followed and services are given a zero output tariff. See Holden and Holden (1975), Greenaway and Milner (1993) and Holden (2001) for a critical evaluation of ERP.

6 These estimates are based on data obtained from the DTI and use a different approach to calculate ad valorem equivalents. Using this approach 2003 yields tariff rates of 10.7% for MFN, 9.6% for EU and 5.1% for SADC. The weighted average (using import values) nominal tariff in 1993 equals 10.1%.

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Figure 1: Evolution of nominal tariff protection

Evolution of nominal tariff protection

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1994

1997

2000

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%

SurchargesTariffs

All Agriculture Mining Manufacturing

Note: The tariff rate for 2003 reflects the weighted average (using import values) of MFN, EU and SADC rates.

All aggregate sectors experienced a decline in nominal and effective protection between 1994 and 2003, but protection remains high in some sectors (Table 1). Relatively strong declines in nominal protection were experienced in textiles, footwear, wearing apparel and communication equipment. Despite these declines, nominal protection remains high in the textile, clothing and footwear sectors where average tariffs exceed 20%. Other highly protected sectors are tobacco (33%) furniture (17.4%) and motor vehicles (15.2%). The structure of effective protection rates is similar to nominal protection rates and therefore high ERP are also found in the tobacco (257%), textiles (76%), clothing (94%), footwear (51%), and furniture (46%) sectors.7 These rates are substantially lower than in 1994 when ERP exceeded 100% for most of these sectors.

Table 1: Measures of sectoral protection

Scheduled rates ERP Anti-export biasa

1994 2003 % Δb 1994 2003 1994 2003 All 21.9 10.6 -9.3 38.6 18.9 2.0 1.4 Agriculture 8.9 4.4 -4.1 7.3 3.8 1.2 1.1 Mining 2.8 0.6 -1.9 3.8 -1.2 1.1 1.0 Total Manufacturing 22.5 10.9 -9.5 48.4 24.3 2.2 1.5 Food 18.8 11.5 -6.2 55.3 38.3 3.1 1.9 Beverages 29.3 15.4 -10.8 51.9 28.4 2.0 1.4 Tobacco 41.7 32.9 -6.2 340.5 257.2 13.4 6.2 Textiles 41.3 20.3 -14.8 149.7 76.2 3.3 2.1 Wearing apparel 75.1 33.4 -23.8 218.4 94.1 4.2 2.2 Leather products 25.9 11.3 -11.5 59.7 18.8 6.1 2.0

7 The correlation between ERP and nominal protection rates exceeds 0.79 in all cases.

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Footwear 48.0 22.7 -17.1 106.0 51.1 5.1 2.1 Wood products 14.5 8.5 -5.3 21.7 14.0 1.5 1.3 Paper products 11.3 6.2 -4.7 15.8 10.3 1.5 1.2 Printing & publishing 16.1 4.6 -9.9 22.2 4.5 1.4 1.1 Coke & petroleum 5.1 3.3 -1.8 10.0 8.2 1.2 1.1 Basic chemicals 8.1 1.6 -5.9 14.4 1.4 1.3 1.1 Other chemicals 16.2 4.4 -10.2 32.3 7.4 1.8 1.2 Rubber products 18.6 10.8 -6.5 46.6 31.7 1.9 1.5 Plastic products 19.8 9.8 -8.4 36.2 20.3 1.7 1.3 Glass products 17.2 7.2 -8.5 32.1 13.3 1.5 1.2 Non-metallic minerals 15.0 5.6 -8.2 29.9 10.8 1.4 1.2 Basic iron & steel 8.8 4.3 -4.2 20.1 11.0 1.4 1.2 Non-ferrous metals 10.8 2.1 -7.9 17.9 2.9 1.3 1.1 Metal products 18.3 7.9 -8.8 36.7 16.1 1.7 1.3 Machinery & equipment 10.4 3.6 -6.2 11.9 2.9 1.4 1.1 Electrical machinery 18.3 7.1 -9.4 33.0 13.8 1.8 1.3 Communication equipment 24.2 2.9 -17.1 35.5 1.2 2.2 1.1 Professional & scientific 12.2 0.3 -10.6 9.5 -5.9 1.5 1.0 Motor vehicles 25.9 15.2 -8.5 45.1 32.3 2.4 1.6 Other transport 12.3 0.8 -10.2 14.9 -3.2 1.5 1.0 Furniture 32.1 17.4 -11.2 82.6 46.4 3.1 1.8 Other manufacturing 26.5 5.9 -16.2 96.5 17.5 3.0 1.3

Notes: a. To capture the duty free credit system implemented in the clothing & textile and motor vehicle industries, zero tariffs were imposed on textile inputs in the production of clothing and textiles, and motor vehicles inputs used in the production of vehicles. b. Calculated as ((t1-t0)/(1+t0)-1). Tariffs include ad valorem equivalents for formula duties, specific duties and mixed duties. The AVE are calculated using collection rates. For formula duty and mixed duties the AVE are equal to the collection rates if these exceed the ad valorem component of the tariff. The average value for manufacturing is calculated as the weighted average of the 3-digit SIC codes using real output between 1988-2002 as weights. The tariff rate for 2003 reflects the weighted average (using import values) of MFN, EU and SADC rates. The values for the scheduled tariffs are simple averages at the HS8 digit level.

The reduction in tariffs has also contributed significantly towards raising the profitability of export production and reducing the anti-export bias (AEB) (Table 1).8 Import taxes on intermediate goods were equivalent to 38% of value added in aggregate manufacturing in 1994 (not taking into account export subsidies), but fell to 19% by 2003. The combined effect of a reduced tax on intermediate goods and reduced effective protection was a reduction in the anti-export bias in aggregate manufacturing from 2.2 to 1.5 over this period. However, much of the improvement in the AEB from tariff liberalisation from 1994 to 1997 was offset by the removal of export subsidies under the General Export Incentive Scheme. Kuhn and Jansen (1997), for example, estimate that the removal of export subsidies led to an increase in the anti-export bias between 1993 and 1996. 9

In conclusion, South Africa has made considerable progress in reducing

tariff protection during the 1990s, but there is still scope for further

8 The anti-export bias is calculated as (1+ERP)/(1-XRP) where XRP is the implicit export tax of tariffs

calculated as ∑

∑−

=

iij

iiij

j a

taXRP

1.

9 The lack of export subsidy data prevented a similar analysis in this paper.

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simplification of the tariff structure. Average nominal protection is still higher than the average for developing economies and high effective protection rates remain in many manufacturing sectors. Nevertheless, tariff liberalisation has raised the profitability of export supply, which will have enhanced export growth during the 1990s.

Increased openness The reductions in tariffs, the re-integration of South Africa into the

international arena and a real depreciation of the exchange rate has raised exports and imports as a share of GDP. As shown in Figure 2, merchandise exports as a share of GDP fell during the 1970s and the early 1980s in response to a decline in primary sector exports, particularly gold exports. From the mid-1980s manufactured export growth, spurred by a sizeable real depreciation and recession driven ‘vent-for-surplus’ exports (Fallon and Pereira da Silva, 1994), reversed this trend and total merchandise exports rose as a share of GDP. The role of manufacturing exports in driving this trend is reflected in the rise in its share of GDP from 4% in 1985 to 9.8% in 1994 (Figure 2).

Manufacturing exports as a share of GDP continued to rise in the 1990s,

despite the modest recovery in output growth. By 2000, manufactured exports as a share of GDP had risen to 15%. The rising importance of exports in aggregate manufacturing is also shown by the rise in export orientation (exports/gross output) from 12% in 1993 to 23% in 2000. This increased openness of manufacturing during the 1990s has been broad based, with export orientation rising in 25 of the 28 SIC 3-digit sectors analysed (Table 2). Manufacturing firms have thus become firmly entrenched in the international market and no longer export primarily on a vent-for-surplus basis.

Figure 2: Indices of openness, 1970-2001

Merchandise trade to GDP

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30%

1970

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Merchandiseexports/GDP

Manufacturingexports/GDP

Merchandiseimports/GDP

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Growth in imports also recovered strongly in the 1990s in response to the recovery in output growth and the reduction in import barriers. Import growth had stagnated during the 1980s in response to the depreciation in the mid-1980s, the imposition of surcharges from 1988 and the onset of the domestic recession in 1989. However, from 1990 growth in merchandise imports recovered raising its share of share of GDP from 13% in 1990 to 21% in 2000 (Figure 2). Import penetration in manufacturing rose from 17% to 28% over the same period. The rise in import penetration has also been broad based, rising in 24 of the 28 SIC 3-digit sectors between 1990 and 2000. Particularly strong increases occurred in the textiles, apparel and footwear sectors as well as rubber products, other transport equipment and furniture.

Table 2: South African exports by industry as a share total manufactured exports and export orientation

1970 1980 1990 1994 2000 Manufacturing (Rmill, 1995 prices) 14,495 22,319 38,793 47,617 85,536

Manufactured exports/total merchandise trade 22% 29% 43% 47% 62%

Total Manufacturing 100% 100% 100% 100% 100% Food products 18% 13% 9% 8% 5% Textiles, apparel 4% 6% 5% 6% 3% Wood 0% 2% 2% 2% 2% Paper and printing 9% 5% 7% 6% 6% Chemicals 17% 15% 15% 19% 20% Non-metallic minerals 4% 3% 1% 2% 1% Base metals 13% 33% 32% 25% 22% Fab. metal and machinery 21% 12% 18% 21% 32% Other 13% 11% 11% 12% 9% Export orientation Manufacturing 8% 8% 12% 15% 23% Food products 8% 6% 5% 6% 7% Textiles, apparel 5% 7% 9% 12% 14% Wood 1% 9% 12% 14% 18% Paper and printing 11% 7% 11% 12% 18% Chemicals 14% 10% 11% 15% 23% Non-metallic minerals 8% 7% 5% 8% 11% Base metals 12% 26% 44% 43% 44% Fab. metal and machinery 5% 3% 8% 12% 26% Other 18% 28% 18% 24% 29%

Source: Own calculations based on data obtained from Quantech (2004). Export orientation is calculated as the share exports in gross output. Calculations based on real values.

The composition of exports has also changed with manufacturing

displacing mining as the dominant export sector. During the 1970s and early 1980s mining sector exports accounted for between 60% and 65% of total exports (including services exports). The bulk of this was gold exports, which accounted for between 35% and 52% of total merchandise exports from 1972-1985 (Bell et al, 1999: Table

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2).10 With the collapse in the gold price in the 1980s and the declining grade of ore, the share of mining exports in total exports (gold in particular), fell dramatically, reaching 47% in 1990 and 29% in 2000. In contrast, in response to relatively strong export growth, the share of manufacturing in total exports rose from 25% in 1980 to 41% in 1994. During the 1990s, manufacturing overtook mining as the most important export sector, accounting for 53% of total exports by 2000.

Figure 3: Skill bias of manufactured export growth

Skill bias of export growth, 1994-2002

y = 0.66x - 0.03R2 = 0.33

-0.25-0.20-0.15-0.10-0.050.000.050.100.150.20

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Skill bias of export growth, 1990-94

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y = -1.66x + 0.13R2 = 0.27

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Manufacturing exports have also diversified during the 1990s, with

relatively strong export growth in skill-intensive sectors. This is clearly shown in the scatter plots in Figure 3 where high export growth was experienced from 1994 in relatively skill-intensive sectors such as coke and refined petroleum products, other chemicals, motor vehicles, parts & accessories and other transport equipment. Particularly strong export growth was experienced in motor vehicles and other transport equipment sectors in response to the Motor Industry Development Programme (MIDP) introduced in 1995. The share of these two sectors in total manufacturing exports rose from 6% in 1990 to 19% in 2002. Poor export growth, combined with strong import growth, occurred in less-skill intensive sectors such as textiles, wearing apparel, leather and footwear has also contributed towards the skill-bias of export growth.11 12

10 Based on IDC (1995)—data in current prices. 11 Net exports show similar trends. However, no consistent trend is found when using the capital

intensity (machinery and equipment capital per worker) of production within manufacturing sectors.

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South Africa’s Dynamic Export Performance: A Cross-country Comparison

The ways in which export patterns change over time has profound

implications for the relationship between trade on the one hand, and industrialisation and economic growth on the other. “Success in entering lines of production with significant potential for global demand expansion, high value added and rapid productivity growth widens the scope for the exploitation of increasing returns from larger markets, and enhances the role of trade in economic growth” UNCTAD (2002: 52). In contrast, a high concentration of exports in sluggish global markets or activities with limited potential for productivity growth endangers the growth process. Middle-income countries like South Africa have additional reasons to urgently address the issue of upgrading their export structures. The entry of low wage labour abundant economies such as China and India into the world market have challenged middle-income economies’ comparative advantage in low-skill manufactures. As argued by (UNCTAD, 2002: 126):

“… it is imperative that middle-income countries upgrade rapidly from low skill to more market-dynamic, technology-intensive products with a view to successfully competing with industrialised countries and the first-tier NICs. If not, they risk being squeezed between the bottom and top ends of the markets for manufactured exports”

This section, therefore, presents a cross-country analysis of South Africa’s

dynamic export performance using two different dynamic indicators. Following UNCTAD (2002), ‘dynamic’ products are defined in terms of their global demand potential (market-dynamic products) and productivity potential (supply-dynamic products). The former classification identifies products that have a strong growth potential in world markets, while the latter identifies products characterised by strong productivity growth potential.13

Supply-dynamic products Performance in supply-dynamic products is assessed using a technology-

based product classification, developed by Lall (2000), and used in UNCTAD (2002) and UNIDO (2004). As shown in Table 3, exports are classified into primary products (PP), resource based manufactures (RB), low technology manufactures (LT), medium technology manufactures (MT) and high technology manufactures (HT).

12 Turning to imports, South African imports are heavily concentrated in capital and intermediate goods and reflect the high import dependency of the capital-intensive basic metals and chemicals sub-sectors. etailed discussion of import composition is contained in the longer version of this paper available from the author.

13 The data used in this sub-section differs in important ways from that presented in the rest of the paper. First, data for other countries is obtained from the UN Comtrade database and is classified according to SITC (Revision 2). For South Africa, export data at the 8-digit HS level are obtained from Customs & Excise and converted to 3-digit SITC level using a concordance files obtained from UN Comtrade. Secondly, to facilitate cross-country comparisons, all data are expressed in current US dollars rather than constant 1995 rands.

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Primary products and resource-based manufactures tend to be unskilled-labour- and scale-intensive, and skill requirements tend to rise with the degree of technological complexity (see Lall (2000) for a complete description of each technology category).

“Since increased application of human capital and technology tends to raise

labour productivity, such a classification can be expected to provide a reasonably good guide to sectoral differences in the potential for productivity growth” UNCTAD (2002:66). The ability of a country to shift exports into high technology products therefore has important implications for long run output growth, as productivity growth becomes the primary source of output growth (and income per capita) once underutilised labour and natural resources are exhausted.

Table 3: The Technological Classification of Exports14

PRIMARY PRODUCTS Fresh fruit, meat, rice, cocoa, tea, coffee, wood, coal, crude petroleum, gas, metals

MANUFACTURED PRODUCTS Resource based manufactures

RB1: Agro/forest-based products Prepared meats/fruits, beverages, wood products, vegetable oils

RB2: Minerals-based products Ores & concentrates, petroleum/rubber products, cement, cut gems, glass

Low technology manufactures

LT1: ‘Fashion cluster’ Textile fabrics, clothing, headgear, footwear, leather manufactures, travel goods

LT2: Other low technology Pottery, simple metal parts/structures, furniture, jewellery, toys, plastic products

Medium technology manufactures

MT1: Automotive products Passenger vehicles and parts, commercial vehicles, motorcycles and parts

MT2: Process industries Synthetic fibres, chemicals and paints, fertilisers, plastics, iron, pipes/tubes

MT3: Engineering industries Engines, motors, industrial machinery, pumps, switchgears, ships, watches

High technology manufactures

HT1: Electronics and electrical products Office/data processing/telecommunications equip, TVs, transistors, turbines, power generating equipment

HT2: Other high technology Pharmaceuticals, aerospace, optical/measuring instruments, cameras

“SPECIAL” TRANSACTIONS Electricity, cinema film, printed matter, art, coins, pets, non-monetary gold

Source: Lall (2000)

14 This study moves non-monetary gold (SITC 971) from “special transactions” into the primary products category, and precious and semi-precious stones (SITC 667) from resource-based manufactures to primary products.

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There are also good market-dynamic reasons for shifting exports into high technology products as these products are the fastest growing in world trade. As shown in Table 4, the average annual export growth of high technology products (9.1%) between 1988 and 2002, was almost double that of low technology (5.6%), medium technology (5.7%) and resource-based (4.9%) products. The share of high technology products in world trade rose from 15.8% in 1988 to 23.6% in 2002. All other categories had a smaller share in world trade in 2002 than they did in 1988, although the medium technology group has regained some of its losses since 2000.

An important feature of the changing pattern of world trade in the 1990s,

is the rapid growth in developing country exports, particularly within high and medium technology products (Figure 4). Total developing country as a share of world trade rose from 19.1% in 1988 to 30.5% in 2002. Its share in high technology products doubled from 14.8% to 34.3% over the same period. By 2002, the value of developing country exports of medium and high technology products together exceeded the combined value of primary products, resource-based and low technology manufactures. In contrast, in 1988 medium and high technology exports equalled approximately half the value of the remaining categories.

Figure 4: Developing country market share gains in total exports, by broad technology category, 1988 & 2002 (%)15

0

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Total exports Primary products Resource-basedmanufactures

Low techmanufactures

Medium techmanufactures

High techmanufactures

0

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25

Share 88 Share 02 Gain Developing country growth rate World growth rate

Source: as above Note: Share gains expressed simply in percentage points. Growth rates are annual averages.

15 Country groupings follow World Bank definitions. “Developing countries” include the four mature Tiger economies of East Asia (Hong Kong, Korea, Singapore and Taiwan).

13

In comparison to developing countries, however, South Africa’s total export growth during the 1990s (2% per annum) has been relatively poor. South African export growth has also lagged the average for the world (6%), developed countries (5%), and a selection of countries with similar shares of resource intensive products in total exports to South Africa, the Resource Group (6.1%) (Table 4).16 An important source of this relatively poor growth is the negative growth in primary product exports (-1.1%) during this period. As a result of the poor export performance, South Africa’s share of world exports declined 0.89% to 0.52% between 1988 and 2002.

Table 4: Annual average growth rates by broad technology category, 1988-2002 (%)17

World Developed countries

Developingcountries

South Africa

Resources Group

Total exports 6.02 4.96 9.58 2.02 6.14 Primary products 3.59 2.79 4.95 -1.14 4.18 Total manufactures 6.32 5.13 10.63 6.91 7.72 Resource-based 4.89 4.09 7.89 4.26 5.63 Pure manufactures 6.59 5.33 11.13 8.57 9.52 Low technology 5.63 4.37 7.94 5.57 8.57 Medium technology 5.67 4.77 11.07 9.67 8.51 High technology 9.10 7.14 15.83 11.53 14.95 Source: as above. As described in Appendix C, South African data sources comprise the following: Customs and Excise, the Minerals Production and Sales Statistics database, the South African Reserve Bank (SARB), and the South African Department of Trade and industry (DTI).

Within aggregate manufacturing, exports have grown marginally more

quickly than the global average, but still slower than other developing countries and the Resource Group.18 The growth performance vis-à-vis developing countries is relatively poor in all technology categories and is particularly weak in high technology products. South African exports also lag that of the Resource Group in all but the medium technology category. The relatively strong growth in Medium technology exports can be attributed to the very strong growth in motor vehicle exports under the MIDP programme.

16 The Resource Group consists of twenty-five countries, listed in Appendix A, selected on the basis of having similar levels of natural resource dependent products (primary products + resource-based manufactures) in total exports in the late 1980s. That is, on the basis of having broadly similar export structures. Most of the countries are low- and middle-income countries from Latin America and Sub-Saharan Africa, but also included were Australia, New Zealand, Norway and Indonesia.

17 Country groupings follow World Bank definitions. “Developing countries” include the four mature Tiger economies of East Asia (Hong Kong, Korea, Singapore and Taiwan).

18 There is substantial variation in export performance amongst the members of the Resource Group. The OECD economies, Australia, New Zealand and Norway, have growth rates more in line with developed economies. Indonesia, on the other hand, experienced very high growth rates, especially in high technology products. The growth rates of these ‘outliers’, however, tend to cancel each out, leading to similar growth rates for the group as a whole to those calculated when these four ‘outliers’ are excluded.

14

The relatively poor export growth has resulted in little or no gains to South Africa’s share of world manufacturing exports. This is shown in Table 5 which presents world market shares by region and technology sub-category. South Africa’s share of world exports of manufactures rose marginally from 0.3% to 0.32% between 1988 and 2002, while its share of pure manufactures (non-resource based manufactures) rose from 0.2% to 0.26%.19 As can be seen, South Africa’s faster growth vis-à-vis the world in MT exports has been due to very strong performances in MT1 (automotive), whose world market share (WMS) increased seven-fold from 0.05% to 0.36%, and MT3 (engineering), whose WMS roughly tripled. In high-technology products, South Africa has seen a small rise in its 1988 share of HT1 (electronics), and no change at all in HT2 (other). The relatively poor performance is in stark contrast to the pattern in East Asia, whose share of manufacturing exports rose from 12% to 18%, and share high technology exports rose from 13% to 27% over this period.

Table 5: South Africa’s changing share of developing country, Resource Group and world exports, 1988-2002 (%)

Developing Countries Resource Group World

1988 2002 % change 1988 2002 %

change 1988 2002 % change

Total manufactures 1.7 1.1 -38.0 12.8 11.5 -10.0 0.30 0.32 6.7

Resource based 4.3 2.6 -38.1 11.0 9.1 -16.7 0.76 0.7 -7.9

RB1: Agro-based 2.8 2.0 -26.8 7.9 7.0 -11.9 0.50 0.54 8.0

RB2: Minerals-based 6.6 3.5 -46.1 14.6 12.3 -15.8 1.16 0.94 -19.0

Low technology 0.9 0.7 -26.7 12.8 8.7 -32.4 0.28 0.28 0.0

LT1: Fashion cluster 0.3 0.3 -7.2 5.4 3.9 -26.9 0.15 0.18 20.0

LT2: Other 1.9 1.1 -42.7 23.1 15.5 -32.9 0.39 0.36 -7.7

Medium technology 2.1 1.8 -16.3 18.2 21.1 16.0 0.23 0.39 69.6

MT1: Automotive 0.9 2.4 151.6 14.4 34.6 140.0 0.05 0.36 620.0

MT2: Process 4.6 2.6 -43.6 26.7 23.7 -11.1 0.74 0.73 -1.4

MT3: Engineering 0.7 1.0 50.3 7.6 13.6 80.6 0.08 0.24 200.0

High technology 0.3 0.2 -41.1 6.6 4.3 -34.5 0.04 0.06 50.0

HT1: Electronic 0.2 0.1 -32.4 6.0 4.1 -32.2 0.03 0.05 66.7

HT2: Other 1.3 0.8 -41.8 7.4 4.8 -35.3 0.07 0.07 0.0 Source: as above. Note: Percentage changes calculated as (share02-share88)/share88*100.

South Africa’s share of developing country and Resource Group

manufactured exports fell. The share of developing country exports fell from 1.7% to 1.1% and those of the Resource Group from 12.8% to 11.5% between 1988 and

19 South Africa’s share for world market share for total exports dropped alarmingly (0.89% to 0.52%), but again this is due to the abnormal influence of gold on South Africa’s market share in primary products.

15

2002.20 Loss in share occurred in all technology categories apart from MT1 (automotive) and MT3 (engineering).

Although overall export growth has been comparatively low, some

progress has been made in diversifying manufacturing exports towards medium and high technology products. This diversification is mainly due to the strong growth in motor vehicle related exports (medium technology), with some minor diversification towards high technology products (Figure 5). The Resource Group also diversified its manufacturing exports, but this diversification was more evenly spread across high technology, medium technology and low technology products. The strongest restructuring towards high technology sectors occurred within the East Asian and Pacific region where the share of these sectors in total exports rose from 21% to 41% during the 1990s.

Figure 5: Manufactured export structures, 1988-90 and 2000-02

17 14 18 13 13 9

4433

4938

2119

38

2740

26

20

16

21

22

4339

27

28

25

24

34

46

25

27

1928

1732

21

41

3 5 513

0%

20%

40%

60%

80%

100%

1988-90 2000-02 1988-90 2000-02 1988-90 2000-02 1988-90 2000-02 1988-90 2000-02

World Developingcountries

EAP South Africa Resources Group

Resource-based Low tech Medium tech High tech

Market-dynamic products

The second indicator of South Africa’s dynamic export performance is its

positioning in demand/market-dynamic products. Performance in market-dynamic products is measured by the change of a country’s world market share in products that are becoming steadily more important to global trade. Countries that are able to shift

20 Interestingly, the share reduction is almost twice as large if one removes the four mature Tiger economies are removed from the developing country group. This reflects the emergence during the 1990s of Mexico and China as manufacturing giants, but also Hong Kong’s (and to a lesser extent Singapore and Korea’s) de-industrialisation and shift into tertiary sector activities (Lall & Kraemer-Mbula, 2005).

16

export production towards products with a strong global demand potential will reduce the risk of declining export growth and declining terms of trade.

Previous analyses have noted weaknesses in South Africa’s export

performance from the market positioning perspective (Van Seventer and Gibson (2004; Tsikata, 1999).21 In this section, we extend these analyses and compare South Africa’s performance with East Asia’s and the Resource Group’s. The approach used here is similar to that of Tsikata (1999) and Van Seventer and Gibson (2004), but anchors the analysis around those products that contributed the most to South African export growth during the 1990s. Firstly, products (at 3-digit SITC level) are identified as dynamic products if world export growth exceeds the average for all products (i.e. the share of the product is rising in world trade). Secondly, South Africa’s top 20 products (at 3-digit SITC level) are then identified and their world market share (WMS) is calculated.22 To assess whether these products are positioned optimally in terms of global demand, South Africa’s world market share (WMS) in each of them is compared to world export growth.

We postulate that South Africa is positioned optimally in terms of global

demand if its WMS in these products is rising and they are experiencing higher than average world export growth. This relationship is more clearly shown in Figure 6, which plots South Africa’s changing WMS of its top 20 export growth products against world export growth. The size of the bubble reflects South Africa’s export value of each product in 2002. The horizontal dotted line in the figure represents average world growth for all products (6.02% per year). Optimal market positioning occurs if a large proportion of the 20 products are situated in the top right hand ‘quadrant’ (above the dotted line and to the right of the vertical axis), i.e. South Africa’s WMS is rising in products experiencing above average growth in world demand. Using Tsikata’s (1999) terminology, these are ‘rising stars’.

Poor market positioning occurs if a product’s WMS is rising in stagnating

(in terms of world share) world markets (bottom right quadrant), or its WMS is falling in dynamic world markets (top left). The bottom left quadrant below average world growth reflects products in which the economy is rapidly retreating from stagnating world markets.

21 Van Seventer and Gibson (2004) find a low share of South African exports in the top 40 demand-dynamic products identified by UNCTAD (2002). Tsikata (1999) finds that relative to a range of middle-income economies (Korea, Mexico, Taiwan, Malaysia, Thailand, Brazil), South Africa exports a relatively high proportion of products for which world markets are not growing very fast.

22 The top 20 export growth products accounted for 53% of South Africa’s total exports in 2002.

17

Figure 6: The market positioning of South Africa’s top 20 exports

784 - car parts

112 - alcoholic bev.

713 - engines

057 - fruit & nuts

672 - iron ingots

034 - fish

667 - precious stones (diamonds)

641 - paper & paperboard

782 - special purpose vehicles

684 - aluminium

281 - iron ore

781 - passenger cars

667 - silver & platinum

289 - precious metal ores

784 - furniture and parts

322 - coal & lignite

522 inorganic chemicals

246 - pulpwood

743 - pumps & compressors

671 - pig iron

0

1

2

3

4

5

6

7

8

9

10

-15 -10 -5 0 5 10 15

Change in South Africa's world market share (WMS)

Glo

bal g

row

th ra

te, (

%)

Global total export

growth rate

Note: Dotted line is world growth for all products. WMS changes expressed as percentage points.

As can be seen, the market positioning of South African exports is poor:

The majority of its top 20 exports during the 1990s are in stagnating world markets (below the dotted line). These sectors in the diagram alone account for 43% of total South African exports in 2002. Very few of South Africa’s most important exports are found in the top right hand ‘quadrant’. The major sectors that do fall into this category are passenger cars (SITC 781), pumps & compressors (SITC 743), furniture (SITC 784) and precious metals (SITC 289). Together these sectors only account for 13% of total South African exports.

The contrast in performance with East Asia is clearly shown in Figure 7,

where 16 of the top 20 exports are in dynamic world markets. Thirteen of these fall in the top right hand quadrant. In other words, most of East Asia’s top exports are in markets growing faster than the global average, and it is gaining world market share in them.

18

Figure 7: The great market positioning of East Asia’s top 20 exports

771 - elec. power mach.

759 - computer parts

776 - transistors & semiconductors

752 - computers

763 - sound rec. equip.

793 - ships583 - polymerization

products

775 - household equip.

845 - knitted garments

341 - natural & manuf. gas

894 - baby carriages

843 - women's outer garments

781 - passenger cars 749 - non-elec. parts

893 - articles of plastic

821 - furniture

778 - elec. machinery

772 - switches & relays

655 - knitted fabrics

764 - telecomms. equip.

0

2

4

6

8

10

12

14

-15 -10 -5 0 5 10 15 20 25 30 35 40

Change in EAP's world market share (WMS)

Glo

bal g

row

th ra

te (%

)

Global total export

growth rate

Note: Dotted line is world growth for all products. WMS changes expressed as percentage points.

The market positioning of the Resource Group also poor with a high

proportion of the group’s top export performers located in the lower right quadrant (Figure 8). There is therefore some similarity in performance between South Africa and the Resource Group. A high concentration of exports in primary and natural resource-based products has negatively affected export growth for resource based economies similar to South Africa during the 1990s. Further, these economies have also been unable to restructure significantly into dynamic world markets.

This similarity between South Africa and the Resource Group suggests

that natural resource endowments are an important determinant of export performance and the ability to diversify. The ability of these economies to diversify into high technology products is constrained by the comparative advantage in resource-based products that the rich natural resource endowments provides them with. However, there are also important differences in export growth and diversification amongst countries within the Resource Group. These differences may highlight the role of country specific effects such as trade policy, infrastructure, skills, etc. The importance of many of these supply side determinants is assessed in Section 3.

19

Figure 8: The market positioning of the Resource Group’s top 20 exports

641 - paper

057 - fruit & nuts

081 - animal feed

041 - wheat

022 - milk287 - base metal

ores

322 - coal & lignite034 - fish

424 - veg. oils

843 - women's outer garments

821 - furniture

759 - computer parts

764 - telecomms. equip.541 - pharma.

341 - natural & manuf. gas

781 - passenger cars

011 - edible meat

682 - copper

971 - gold

112 - alcoholic bev.

-2

0

2

4

6

8

10

12

14

16

-20 -15 -10 -5 0 5 10 15 20

Change in Resources Group's meorld market share (WMS)

Glo

bal g

row

th ra

te (%

) Global total export

growth rate

Note: Dotted line is world growth for all products. WMS changes expressed as percentage points.

Concluding points The data analysis in this section highlights a number of important

features of South African export performance since the late 1980s:

• Significant progress has been made in liberalising South Africa’s trade,

although there is scope for further simplification of the tariff structure.

• Manufacturing export growth has increased, but has been poor relative to the average for developing countries and a range of economies that had similar export structures to South Africa in the early 1990s. South Africa’s manufactured exports are being “squeezed” at both ends of the technology spectrum, and not only by better performing countries in East Asia.

• The structure of manufacturing exports is highly concentrated in natural resource-based products, but there has been some diversification into skill-intensive and medium technology products through increased exports of vehicles, chemicals and engineering products. However, South Africa lags other economies (including similar resource-based exporters) in its restructuring of exports towards high technology products.

• The concentration of South African manufacturing (and total) exports in products with relatively weak world export growth has contributed towards the relatively poor performance of South African exports.

20

The evidence therefore indicates that while manufacturing export growth

increased, it has not been sufficient to generate an export-led boom as has been experienced in many economies, particularly within East Asia. The question is why? One of the reasons for the relatively poor export growth appears to be the concentration of exports in natural-resource-based products, which experienced relative low growth in world markets. However, South Africa’s export performance was weak even in natural resource-based products. Further, export growth and diversification into high technology products was poor compared to a range of similar resource-based exporters. This suggests that there were important domestic constraints to export growth during the 1990s. In the following section we draw upon various techniques, including econometric estimations of export supply and demand function, to investigate the various determinants South African manufacturing export performance.

3. Determinants of South African Manufacturing Export Performance

There is a diverse and growing empirical literature on the determinants

of South Africa’s export performance. This literature includes cost or price competitiveness analyses through the use of real effective exchange rates (IMF, 1998, Kahn, 1998, Walters and de Beer, 1999, and Golub, 2000); Revealed Comparative Advantage studies (Valentine and Krasnik, 2000); shift-share analyses of the composition of exports (Nordas, 1996; Bell et al. 1999. Edwards and Schoer, 2002); market positioning studies (Edwards and Schoer, 2002; Van Seventer and Gibson, 2004); and econometric estimates of export supply and demand functions (Smal, 1996; Tsikata, 1999; Edwards and Wilcox, 2003; Edwards and Golub, 2004).

To investigate the determinants of South African manufacturing export

performance, this section estimates export demand and supply relationships using a panel of industry data from 1970-2002. The analysis extends existing empirical work in South Africa in two ways. Firstly, a fuller specification of the export supply relationship is estimated. Secondly, the endogeneity of export volumes and export prices is taken care of.

Specifying the Export Demand and Supply Relationships We use a variant of the imperfect substitution model outlined in Goldstein

and Kahn (1985) and discussed further in Edwards and Wilcox (2003). 23 This model is represented as a system of equations for export supply (Xs) and export demand (Xd), which simultaneously determine the export price and the export

23 The model is an imperfect substitutes model where imperfect substitutability between domestic and export products enables domestic and export prices to differ from one another (Goldstein and Kahn, 1985).

21

quantity. The long run export demand (Xd) and supply (Xs) relationships are given by the following log-linear structures:

0,43210 >+++−= ∗∗iX

d YPePX δδδδδδ (1)

and

0,3210 >Ψ+−−+= iXs ZCPPX ααααα (2)

where (all variables in logs):

X = volume of exports Y* = real foreign income P* = foreign domestic price Px = domestic price of exports e = domestic to foreign currency exchange rate P = domestic price C = nominal variable cost Z = vector of other variables that influence the supply of exports

Export demand is positively affected by foreign income (Y*) and the price

of competing foreign goods (P*), but is negatively affected by the foreign price of domestic exports (Px*= Px/e).24 The quantity of exports supplied is specified as a positive function of its own price and a negative function of the domestic price index and variable costs.25 As export sales become profitably relative to domestic sales (Px/P rises) firms shift production towards the export market. Other supply side variables include tariff rates, import penetration, infrastructure costs, capacity utilisation and trend income.26

Following Fallon and Pereira da Silva (1994), Tsikata (1999), Behar and

Edwards (2003) and Edwards and Golub (2004), capacity utilisation is included to test the “vent-for-surplus” hypothesis. A negative coefficient is expected. Tariff liberalisation reduces the anti-export bias of production and thus positively affects export production. Trend income is included as a proxy for non-price improvements in competitiveness (infrastructure, total factor productivity, export supply networks, learning by doing) arising from increased economic activity. Finally, infrastructure constraints are expected to negatively affect export supply.

24 Normally it is assumed that the demand function is homogenous of degree zero in prices and the restriction -δ1(=δ2)+δ3 = 0 is imposed, i.e. Px/eP* is included on the right hand side.

25 Homogeneity on the supply function requires the restriction that α1+α2+α3=0. Alternatively, the supply function can be specified in terms of real variable costs and the relative price of exports to domestic prices (Px/P).

26 We also tested two concentration indices, the Gini coefficient and Rosenbluth index, obtained from Fedderke and Szalontai (1995). These variables were only available till 1996, thus restricting our sample size considerably. The coefficients were also mostly insignificant, although when significant they were positive. The specifications presented in this study therefore exclude the concentration indices.

22

An important consideration in estimating the export supply and demand functions is that Px and X are endogenous variables. Failure to account for this endogeneity will give rise to simultaneous equation bias when estimating either equation.27 However, this is less of a problem in small price-taking economies where the export price is exogenous and the demand for exports is infinite. As export prices are no longer endogenous, the export supply function can be estimated independently of the demand equation.

Two approaches to the estimation of the export demand and export

supply functions are followed in this study. Firstly, we first estimate the export demand function and test whether the small country assumption holds in the case of South Africa. Following Riedel (1988) export demand (equation 1) is normalised on Px to obtain

∗∗ +++−= YPeXPx d

1

4

1

3

1

2

11

0 1δδ

δδ

δδ

δδδ

. (3)

In a small price taking country, the export price elasticity of demand (δ1) tends towards negative infinity and the coefficient on Xd and Y* therefore tend towards zero.28 Equation (3) then becomes the standard PPP relationship in which export prices, measured in domestic currency, equal foreign prices multiplied by exchange rate. If price homogeneity holds, the coefficients on the exchange rate and foreign prices equal one, i.e. δ2/δ1 = δ3/δ1 = 1.

Secondly, we estimate the reduced form function for export volumes.29

Imposing the homogeneity assumptions and expressing the export demand and supply functions in terms of relative prices (i.e. δ1=δ2=δ3=δp and α1 = α2 = αp) and real unit labour costs (RC), the reduced form equation for exports is expressed as:

( )[ ] 0,1

154320

1

>+−+−+++

= ∗∗iZRCYPPeX λλλλλλ

λ (4)

where

Ψ=====+= 5341

41312

1

11

1

0100 ,,,,, λαλ

δδα

λαλδα

λδδα

αλ .

27 This arises because the export volume and price in the demand and supply relationship are correlated with the error terms. Domestic prices, wages and the exchange rate may also be endogenous. Export growth can affect the exchange rate, which in turn affects inflation and wages. This problem may be particularly problematic for South Africa during the 1970s and 1980s when the gold price rose and then fell.

28 However, rising world demand for a particular product will affect export supply through its impact on world prices.

29 Initial estimates of the export supply function (2) gave a negative instead of positive coefficient for the relative price of exports to domestic products (PX/P); a result also found by Fallon and da Silva (1994). It was thus decided to concentrate on the reduced form results.

23

(e+P*-P) is Real Effective Exchange rate measuring the price of foreign products relative to South African products, valued in a common currency. A real depreciation (e+P*-P rises) positively affects exports. Note that in a small price-taking economy, the reduced form equation effectively becomes the export supply equation (2).

We draw on various data sources to construct a panel of data for 28

manufacturing sectors over the period 1970-2002. The data are mostly obtained from Quantec (2004), the World Development Indicators, the UNIDO INSTAT database, Statistics South Africa and the IMF International Financial Statistics. Further details are presented in the data Appendix.

To capture the short-run dynamics, the long-run relationships (equations

(2, 3 and 4) are embodied in an autoregressive distributed lag (ARDL) model. To capture the influence on exports of industry specific variables that are constant over time, sector specific effects (ηi) are included.

The export functions are estimated using two estimators: A dynamic fixed

effects (DFE) estimator and the “system” General Methods of Moments (GMM) estimator developed by Arrelano and Bover (1995) and Blundell and Bond (1998).30 When using the GMM estimator, export volumes, prices and the exchange rate are treated as endogenous variables. In estimating the functions, the data are pooled and homogeneity is imposed for all parameters other than the sector fixed effects (ηi).

A potential limitation arising from the pooling of the data is that it

imposes common long-run relationships and short run dynamics across all sectors, which can give rise to misleading estimates of the coefficients (Pesaran and Smith, 1995).31 To deal with the possible biases arising from parameter heterogeneity, export functions were estimated for a number of broadly defined manufacturing sub-sectors: Beneficiated, natural resource-based, metal and labour-intensive products.32

Empirical Results

Export demand

To test the sensitivity of the export demand function to the selection of foreign prices two data sources are used: (a) US import prices, obtained from the

30 See Pesaran and Smith (1995) for a discussion of the DFE and other estimators. 31 Alternative estimators are the Mean Group estimator of Pesaran and Smith (1995: 80) and the Pooled

Mean Group Estimator of Pesaran, Shin and Smith (1999). The former allows for heterogeneity in short and long run coefficients, while the latter constrains the long run coefficients to be the same for each sector, but allows for short-run heterogeneity across sectors.

32 Beneficiated consists of iron & steel, chemicals and non-ferrous metals. Natural-resource based includes beneficiated products, paper products and food products (food, beverages & tobacco). Metal products include metal products, machinery & equipment, electrical machinery, motor vehicles and other transportation equipment. Labour-intensive products include textiles, wearing apparel, footwear, leather and furniture.

24

Bureau of Labour Statistics, and (b) a weighted average output deflator for developed countries, constructed from the UNIDO INSTAT (2001) database. The estimations using the foreign output price deflators are estimated over the periods 1970-99 and 1980-99 to enable comparisons with the results using the US import prices. Table 6 presents the estimated long-run average coefficients for the full sample of manufacturing industries and Table 6 to Tables 7-9 present the results for the sub-groupings.

Table 6: Long-run average export demand coefficients for manufacturing

Using US Import Price Using Foreign output deflator

DFE GMM DFE GMM DFE GMM

1982-99 1970-99 1980-99

Export 0.084 ns 0.000 ns -0.103 ** -0.048 * -0.021 ns -0.008 ns

Exchange rate 1.000 *** 1.077 *** 1.205 *** 1.414 *** 0.916 *** 1.081 ***

Foreign price 0.934 ** 0.435 * 0.948 *** 0.941 *** 1.186 *** 0.259 *

Foreign output -0.005 ns 0.077 ns 0.455 *** 0.581 *** -0.136 ns 0.035 ns

Adjustment term -0.104 *** -0.109 *** -0.173 *** -0.048 *** -0.123 *** -0.152 ***

Tests (H0)

Exchange rate = 1 ns ns ** *** ns ns

Foreign price =1 ns ** Ns ns ns ***

Erate=Pfor ns ns Ns ns ns ***

R2 0.57 0.40 0.54

F 16.06 *** 20239 *** 13.61 *** 33138 *** 16.70 *** 11685 ***

Obs 428 428 812 560

AR(1) *** *** ***

AR(2) ns ns ns Note: lag limit set to 10 for GMM estimations, except for the period 1970-99 where it is set to 5 (to solve problem of autocorrelation).

The estimation results present supportive evidence for the “small

country” hypothesis for total manufacturing when the sample is restricted to the 1980s and 1990s. The coefficient on export volumes and foreign output during this period is insignificantly different from zero and the result is robust to changes in the foreign price variable or the estimator (DFE or GMM). The results are less robust when the sample is extended to include the 1970s. The long-run average coefficients on exports and foreign output estimated using the DFE are significantly different from zero and imply a price elasticity of export demand of -10 and an income elasticity of export demand of 4, respectively. However, the GMM estimator suggests that when the endogeneity of export volumes and the nominal effective exchange rate are accounted, the export volume coefficient is only significant at the 10% level.33 Thus the small country hypothesis holds once endogeneity problems are dealt with.

There is also strong evidence that the long run average coefficients on the

nominal effective exchange rate and the foreign price variable are insignificantly

33 The implied price elasticity of demand and income elasticity of demand are -21 and 12, respectively.

25

different from each other and are equal to 1. The null hypothesis of equality of coefficients is only rejected in the GMM estimator results when using foreign output deflators over the period 1980-1999. In most cases it is also not possible to reject the hypothesis that the long-run coefficient on the exchange rate or foreign price equals 1. This provides strong evidence that domestic exporters are price-takers in the international market and hence that export prices rise by the full increase in foreign prices or the depreciation of the exchange rate.34 These results are consistent with those found by Edwards and Wilcox (2003) for aggregate non-gold merchandise exports.

Although some variation is found, the results for the sub-groups are

broadly consistent with those for total manufacturing.35 There is strong evidence that the metal product and labour-intensive industries are price-takers in the international market and therefore face an infinite demand for their products. In both these sub-groupings, the coefficient on export volumes is mostly insignificant. Amongst natural resource based industries, a significant negative coefficient on export volumes is found during the 1970-99 period (giving an implied price elasticity of export demand of -4 to -10), but this becomes insignificant once the endogeneity of export volumes and the exchange rate are dealt with and the sample is restricted to the 1980s and 1990s (see the GMM results). Similarly, in most cases the equality of the exchange rate and foreign price coefficients cannot be rejected. In cases where they diverge (mainly metal products) export prices are generally found to be more strongly affected by the exchange rate (equal to or greater than 1) than foreign prices.

Overall, therefore, the results provide strong evidence that South African

industries are price-takers in the international market. On average, export prices rise by the full depreciation of the rand and the increase in the foreign price.

Various implications arise from these results.

• Firstly, export growth is not predominantly dependent on the economic prosperity of South Africa’s trading partners or on their ability to compete in the export market on the basis of price.

• Secondly, this implies that export volumes are determined by the profitability of export supply. Factors that raise the output price received by exporter and reduce their cost of production will therefore enhance export performance.

• Thirdly, exchange rate depreciations on average positively affect export performance by raising the profitability of export supply, and not by increasing the cost competitiveness of South African products. Exporters

34 The adjustment lag is relatively slow, suggesting that export prices adjust to correct 10% to 17% of the disequilibrium in the long-run equilibrium each year. However, the short-run coefficients suggest that between 21% and over 100% of the adjustment takes place within the same year, implying a relatively quick adjustment period.

35 The results for beneficiated products have been omitted as they are similar to that of natural resource based products.

26

raise their prices by the depreciation rate and do not, on average, lower the foreign currency price of their products in order to capture market share.36

These implications do not imply that world demand and foreign market

access are unimportant. While world demand does not directly affect export performance via the demand relationship, it affects export supply via its impact on world prices. Similarly, preferential reductions in foreign tariffs and market access will improve export performance if they raise the price received by exporters.

Table 7: Long-run average export demand coefficients for natural resource products

Using US Import Price Using Foreign output deflator

DFE GMM DFE GMM DFE GMM

1982-99 1970-99 1980-99

Export -0.262 * -0.040 * -0.250 ** -0.097 *** -0.278 ** -0.048 ns

Exchange rate 0.440 ns 0.575 ** 0.809 *** 0.964 *** 0.421 ns 0.797 ***

Foreign price 1.227 *** 0.936 *** 0.763 *** 0.838 *** 1.275 *** 0.640 **

Foreign output 1.513 * 1.060 ** 1.314 *** 1.140 *** 1.280 * 0.622 **

Adjustment term -0.129 *** -0.111 *** -0.137 *** -0.109 *** -0.129 *** -0.129 ***

Tests (H0)

Exchange rate = 1 ** ns ns ns ** ns

Foreign price =1 ns ns ns ns ns ns

Erate=Pfor ns ns ns ns ns ns

R2 0.57 0.44 0.55

F 11.57 *** 61.78 *** 11.40 *** 99 *** 12.87 *** 773 ***

Obs 177 177 319.00 220.00

AR(1) ** *** ***

AR(2) ns ns ns

Table 8: Long-run average export demand coefficients for metal products

Using US Import Price Using Foreign output deflator

DFE GMM DFE GMM DFE GMM

1982-99 1970-99 1980-99

Export 0.073 ns 0.055 *** -0.106 ns 0.038 ns 0.074 ns 0.029 ns

Exchange rate 1.398 *** 1.279 *** 1.096 *** 0.716 *** 0.935 *** 1.325 ***

Foreign price -0.394 ns -0.537 * 1.066 *** 1.270 *** 0.742 ns -0.792 ns

Foreign output -0.837 ns -0.549 ns 0.551 *** 0.967 *** -0.079 ns -0.699 *

Adjustment term -0.209 *** -0.195 *** -0.409 *** -0.219 *** -0.231 *** -0.220 ***

Tests (H0)

Exchange rate = 1 ns ns ns ** ns ns

Foreign price =1 ** *** ns ns ns ***

Erate=Pfor ** ns ns ** ns ***

36 A further implication of this point is that a depreciation of the currency will improve (or rather will not worsen) the trade balance.

27

R2 0.62 0.50 0.58

F 11.38 *** 11.96 *** 10.81 *** 22 *** 10.74 *** 5 **

Obs 126 126 203.00 140.00

AR(1) ** ** **

AR(2) ns * **

Table 9: Long-run average export demand coefficients for labour-intensive products

Using US Import Price Using Foreign output deflator

DFE GMM DFE GMM DFE GMM

1982-99 1970-99 1980-99

Export -0.012 ns 0.027 ns -0.158 *** -0.042 * -0.019 ns -0.004 ns

Exchange rate 1.620 *** 1.384 *** 1.163 *** 1.027 *** 1.215 *** 1.293 ***

Foreign price -0.119 ns -0.072 ns 2.771 *** 1.232 *** 1.342 * 0.205 ns

Foreign output -0.137 ns -0.323 ns 0.254 ns -0.234 ns -0.332 ns -0.256 **

Adjustment term -0.230 ** -0.266 *** -0.587 *** -0.423 *** -0.378 *** -0.493 ***

Tests (H0)

Exchange rate = 1 * ns * ns ns **

Foreign price =1 ns ns *** ** ns **

Erate=Pfor ns ns ns ns ns **

R2 0.58 0.48 0.61

F 7.23 *** 5.42 * 8.29 *** 22 *** 10.28 *** 3 ns

Obs 72 72 145.00 100.00

AR(1) * ** **

AR(2) ns ns ns

Export supply

The export demand analysis identifies the importance of analysing factors that affect export supply. Some of the most important results arising from the estimation of the reduced form equation are presented here. Table 10 presents the results for total manufacturing, while Table 11 presents those for the industry sub-groupings. Only the reduced form results using the foreign output deflator over the period 1970-99 are presented for the sub-groups, as the results using US import prices are similar.

Table 10: Reduced form average coefficients for manufacturing

Using US import

prices Using foreign output deflators 1982-1999 1970-1999 1980-1999 Coef. Coef. Coef.Long run Relative price 2.05 *** 2.45 *** 1.81 *** Foreign output 1.38 *** 1.20 *** 1.61 *** ULC 0.37 ns -0.51 ns 0.11 ns

28

Output 0.54 ns 0.33 ns 0.57 ** Output deviation -0.77 ns -0.28 ns -0.75 ns Import penetration 0.37 ** 0.23 ns 0.55 *** Rail capacity 2.05 * 1.95 * 2.34 *** Fuel P -1.38 *** 0.20 ns -1.17 *** Adjustment term -0.20 *** -0.19 *** -0.25 *** Short run Relative price 0.37 *** 0.77 *** 0.32 *** Foreign output 1.22 *** ULC -0.19 * Output 0.80 ** Import penetration 0.42 *** 0.42 *** 0.50 *** Output deviation -0.61 *** -0.47 ** -0.68 *** Rail capacity 1.10 *** 1.78 *** 1.29 *** Other K/L -0.07 ns -0.76 ** -0.40 ns Skill/Unskill 2.00 *** 3.02 *** 1.98 *** Sanctions -0.06 * -0.02 ns -0.09 *** Adj R-squared 0.27 0.24 0.30 F( 41, 410) 5.05 *** 5.91 *** 6.35 *** Number of obs 452 784 560

Note: The error correction parameterization of the ARDL model is estimated. Dummy variables are included for each sector, the MIDP programme (1995-2002), political turmoil in 1976 and the debt crisis (1984-86). Insignificant short run coefficients have been eliminated

Table 11: Reduced form average coefficients for sector groupings, 1970-99 using foreign output deflators

Beneficiated Natural resource Metal products Labour-intensive

Coef. Coef. Coef. Coef. Long run Relative price 2.33 *** 1.51 *** 0.79 ns 4.13 *** Foreign output 1.01 ns 1.48 * -0.14 ns 2.27 *** ULC -0.18 ns -0.16 ns 0.03 ns -1.00 ns Output 0.28 ns 0.48 ns 0.62 * 0.57 ns Output deviation -0.47 ns 0.23 ns -1.27 *** -0.63 *** Import penetration 0.46 ns 0.31 ns 0.90 ns 0.98 ns Rail capacity 0.61 ns 0.92 ns -0.79 ns 5.74 ** Fuel P 0.69 ns -0.26 ns -0.98 ** 2.06 *** Adjustment term -0.20 *** -0.24 *** -0.36 *** -0.36 *** Short run Relative price 0.99 *** 0.66 *** 0.24 ns 1.39 *** Foreign output 1.08 *** 1.18 *** 1.00 *** 1.20 ns ULC -0.14 ns -0.12 ns 0.00 ns -0.63 * Output 0.70 ns 0.45 ns 1.42 ** -0.19 ns Import penetration 0.32 *** 0.27 *** 0.79 *** 0.61 *** Output deviation -0.54 * -0.51 ns -0.79 ** 0.08 ns Rail capacity 1.81 *** 1.59 *** 1.36 *** 1.87 ** Fuel P -0.10 ns -0.09 ns -0.01 ns 0.22 ns Other K/L -0.82 ** -0.71 * -3.35 ns -23.62 ns Skill/unskill 2.98 ** 2.58 ** 5.39 *** 10.25 * Sanctions -0.03 ns -0.04 ns 0.02 ns -0.08 ns Adj. R2 0.32 0.20 0.42 0.38 F-statistic 4.21 *** 3.38 *** 5.82 *** 4.33 *** Obs 196 308 196 140

29

Resource endowments and comparative advantage As shown earlier, the dependence on natural resource-based products and

the failure to diversify sufficiently into products with growing world markets is an important source of South Africa’s poor aggregate manufacturing export performance during the 1990s. Resource-based products are declining as a share of world trade. These products are also characterised by a long term decline in prices relative to other products, although the world economy is currently experiencing a commodity price boom. The net effect of the existing trade structure and the inability to diversify sufficiently is that South Africa’s share of developing economy exports declined dramatically from 1.73% in 1988 to 1.07% in 2002.

The dominance of natural resource-based products in South African

exports and the failure to diversify significantly during the 1990s in part reflect South Africa’s rich endowment of natural resources, rather than a failure of policy. Wood and Mayer (2001), for example, show that Africa’s land abundance per worker, combined with its low level of skills, is an important determinant of its high share of primary products in total exports. Dependence on primary and natural resource-based exports also inhibits diversification as it can lead to a ‘Dutch Disease’ effect (Wood and Mayer, 2001), and results in volatile exchange rate movements (Sachs and Warner, 1997; Collier, 2001).37 This volatility is detrimental to manufacturing and agricultural processing, which have a low share of factor costs in total costs and are therefore unable to absorb the negative impact of large price decreases (Collier, 2001). With its large natural resource endowments, South Africa is not immune from these effects.

The entry of highly populated, low-income economies into the world

market from the mid-1980s has also inhibited the diversification of middle-income countries such as South Africa into labour-intensive exports. UNCTAD (2002: 126) estimates that the share of low-skilled labour (adults with schooling up to secondary level) in world trade rose from 64% to 68% due to the participation of these economies in the world market. In addition, rapid skills accumulation in the Newly Industrialised Economies (NIEs) and the abundance of skilled labour in developed economies has reduced options for diversification into skill-intensive exports. South Africa’s natural resource endowment has thus led to a squeeze in competitiveness by both developed and NIEs and labour abundant developing economies.

While natural resource endowments may inhibit diversification, the

availability of skilled labour is shown to be an important determinant of diversification into manufacturing. The econometric estimates in Table 10 and Table 11 show a strong positive relationship between the skill-intensity of production

37 The rents generated by primary commodities have also been associated with poor governance and substantially higher risk of civil war, both of which negatively affect economic growth (Sachs and Warner, 1997)

30

and export performance, with coefficients for aggregate manufacturing in excess of 2. The coefficient on the skill-unskilled ratio for metal products, which fall in the high technology group of products, is a high 5.4. The ability to diversify into high technology sectors is therefore strongly influenced by the availability of well educated labour. The importance of skilled labour for the diversification of exports into manufacturing within Africa has also been shown by Wood and Mayer (2001).

Relative prices and competitiveness of manufacturing Foreign prices, domestic prices and the exchange rate have a strong

impact on manufacturing export performance in South Africa. This is shown by the positive and significant coefficient on the relative price variable (the real effective exchange rate) in the reduced form results presented in Table 10 as well as Figure 938 39 A 1% increase in the relative price of exports is estimated to raise average manufacturing export volumes by 1.8% to 2.5% in the long-run. The very elastic response of export volumes to changes in relative prices found in these estimates is much larger than the estimate (0.63) by Fallon and da Silva (1994), but is similar to the results (1.6 to 2.8) of Edwards and Golub (2004).

Support for the vent-for-surplus hypothesis is also found, but its

importance in determining export growth is diminishing. Declines in output from the long-run trend are found to positively affect aggregate manufacturing exports, at least in the short run. As shown in Table 10, the short-run coefficients on the output deviations variable range from -0.47 to -0.68. The vent-for-surplus relationship helps to explain why export growth continued during the late 1980s (see Figure 9), despite the real appreciation of the currency. The rapid growth in exports from the early 1990s reflects a diminished importance of vent-for-surplus exports, as well as a once-off adjustment to the ending of sanctions and the re-integration of South Africa into the world economy.40

38 Note that in this specification, price homogeneity is imposed and foreign prices (P*), domestic prices (P) and the exchange rate (e) are combined into a single relative price variable (eP*/P). In many cases, but not all, the restriction of homogeneity could not be rejected.

39 The use of the real effective exchange rate as a measure of South African export competitiveness is widespread in South African empirical analysis (IMF, 1998, Kahn, 1998, Walters and de Beer, 1999, and Golub, 2000). Despite the sensitivity of this measure to the choice of price indices and weights, most estimates suggest that South Africa’s competitiveness improved from the mid 1990s. The recent appreciation of the Rand, however, has reversed much of this gain.

40 The coefficient on the sanctions dummy (1986-92) is significant and negative for aggregate manufacturing when the period is restricted to the 1980s and 1990s (Table 10).

31

Figure 9: Real effective exchange rate and exports in aggregate manufacturing

Aggregate manufacturing

0.00

0.05

0.10

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0.20

0.2519

75

1977

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Expo

rt or

ient

atio

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020406080100120140

REE

R (e

P*/P

, 199

5=10

0)

Export orientation REER

Note: The REER is constructed using the weighted average foreign output price deflators, the weighted average nominal exchange rate and the domestic producer price index. Export orientation is the value of exports in gross output valued in 1995 prices.

The highly elastic response to relative prices for aggregate manufacturing

is also found within all sub-groups apart from metal products (Figure 10).41 The long-run coefficient on relative prices in the reduced form results for beneficiated and natural-resource based products range from 1.5 to 2.3 (Table 11). Much of this appears to be driven by the positive impact of exchange rate depreciations on exports of these products. Labour-intensive products appear to be particularly sensitive to relative prices in the long-run (4.13).

In contrast, exports of metal products are not sensitive to changes in

relative prices. This is most clearly shown in Figure 10 during the period 1987 to 1995 when the REER fell, but export orientation rose very strongly. Three factors may explain the insensitivity of metal product exports to relative prices.

• Firstly, exports of these products are very sensitive to domestic demand

conditions. The level of exports is weakly correlated with the level of output (the long-run coefficient of 0.67 is significant at the 10% level) and is very strongly affected by business cycles. A decline in output below its long-run trend raises exports by 1.3% in the long-run. The correlation with output growth

41 We also find strong evidence that the sectoral composition of exports is determined by relative prices across sectors. This provides support for the argument of Bell et al. (1999) that commodity price booms raise the share of natural resource-based products in total exports.

32

may reflect the development of technological capabilities required for the production of these products prior to entering the export market.42

• Secondly, exports of metal products are strongly biased towards the regional market and reflect advantages arising from regional proximity and the ability to offer after sale service (repair, operator training and engineering support) rather than cost competitiveness in production.43 44 Thus, many of the regional exports contain little domestic content as is reflect in the very high import content of these products (60% for machinery and over 80% for scientific and professional and communication equipment). Additional evidence of this effect is shown by the high positive short run coefficient on import penetration (0.79) for metal products in Table 11.

• Thirdly, export performance within the motor vehicle industry during the 1990s has largely been driven by industrial policies such as the MIDP, rather than adjustments in response to international price movements.

Figure 10: Export performance and the Real Effective Exchange Rate by sub-group

Beneficiated products

0.000.050.100.150.200.250.300.35

1975

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2001

Expo

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020406080100120140

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Export orientation REER

Metal products

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020406080100120140160

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Export orientation REER

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Labour-intensive products

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42 Goldstein and Kahn (1985:1060) note that, “secular changes in the level of aggregate real output will be accompanied by advances in factor supplies, infrastructure, and total factor productivity that will lead to an increase in export supply at any given level of export prices.”

43 Africa accounts for 31% of total exports of these products, but only 18% of total SA manufacturing exports.

44 After sale service has become an important competitive tool involving repair, operator training, and engineering support (Gourevitch et al., 2000).

33

Firm level survey data provides further evidence of the effect of exchange

rate depreciations on export supply. Drawing on a survey of large firms (more than 50 employees) located in the Greater Johannesburg Metropolitan Area (GJMA), Chandra et al. (2001) find that a high percentage of firms raised exports in response to the Rand crisis of 1998. The positive response was particularly strong amongst firms employing between 200 and 10,000 workers, where 80% of firms exported more. Less than 45% of small firms (50 to 100 employees) raised exports. Many of these firms (30%) were uncertain about the exchange rate depreciation and decided to wait and see prior to altering production or substituting away from imports. Exchange rate volatility therefore appears to have negative impact on export supply, particularly within small firms who are unable to bear the cost of fluctuations in profitability.

These results thus provide considerable support for the importance of a

stable and competitive real effective exchange rate in driving export performance. Although the real depreciation of the Rand during the 1990s has contributed extensively towards growth in manufacturing exports during this period, the volatility of exchange rate fluctuations has potentially deterred new entrants and given rise to a more muted response than otherwise would have been the case. This may have contributed to the poor export response relative to other developing economies.

Variable costs of production The profitability of export supply is dependent both on output prices as

well as the variable costs of production. In the econometric analysis of the determinants of export supply, variable production costs are captured by unit labour costs (ULC) and producer prices.

The negative impact of domestic price inflation on export performance

has already been shown in the analysis of real exchange rates. Domestic price inflation causes a real appreciation of the currency and hence a decline in export performance. An implication drawn from this is that nominal depreciations of the currency do not lead to long-term increases in export performance if the gains in competitiveness are eroded by domestic inflation and wage increases (Edwards and Wilcox, 2003).

ULC is found to be insignificant in all but labour-intensive sectors where

a long-run coefficient of -1.2 is estimated in the export supply function (not shown). This is consistent with expectations as natural-resource based products and metal products are less dependent on labour costs as a determinant of the profitability of export supply. Edwards and Wilcox (2003) also find a significant negative coefficient on ULC in their estimates of the export supply function.

The importance of labour costs competitiveness has also been shown by

Edwards and Golub (2004) who analyse South Africa’s unit labour costs relative to a range of developed and developing economies. They find that South African labour cost competitiveness improved over the 1970-1998 period for most sectors,

34

with particularly large improvements in the late 1990s (see the unit labour cost bar Figure 11).45 Their econometric results show that relative unit labour costs, relative productivity and relative wages are important determinants of South African manufacturing export performance. As found in this study, labour-intensive sectors are more strongly affected by labour cost competitiveness than natural resource intensive sectors.46

Despite the gains in labour cost competitiveness during the 1990s, South

African relative unit labour costs in aggregate manufacturing still exceed those of other developing economies. This will have contributed towards the slow growth in manufacturing exports relative to developing economies. Improved export growth, particularly within labour-intensive sectors, can be enhanced by policies that improve labour productivity combined with wage moderation.

45 Much of the gain in competitiveness during the 1990s is due to the depreciation of the rand, although South Africa’s relative labour productivity also improved in the late 1990s (Edwards and Golub, 2004).

46 They estimate a long-run coefficient on Relative Unit Labour Costs of -1.9 for natural resource intensive, -2.8 for labour-intensive and -1.78 for chemical products.

35

Figure 11: South African wages, productivity and unit labour costs in total manufacturing

a. Against Developed Countries

0.0

0.2

0.4

0.6

0.8

1.0

1.2

1.4

1970-79 1980-89 1990-94 1995-98

b. Against Developing Countries

0.00.51.01.5

2.02.53.03.5

1970-79 1980-89 1990-94 1995-98

wages productivity unit labor cost

Source: Edwards and Golub (2004).

Infrastructure Economic infrastructure such as transport, communication, power, water

and sanitation systems provide the foundation for economic activity within an economy. The provision of infrastructure also has important consequences for an economy’s export performance.

• Firstly, the provision of economic infrastructure raises economic growth (DBSA, 1998) and therefore indirectly exports. This indirect relationship is supported by the positive relationship between exports and trend output found in this study.

• Secondly, good infrastructure lowers the transaction costs associated with exporting.

• Thirdly, good infrastructure facilitates the diversification of export production (Elbadawi, 1999; Collier, 2002).

• Fourthly, lower transport costs can give rise to powerful forces for agglomeration (Redding and Venables, 2004) and contribute towards the

36

development of international production networks in world trade (Mayer, 2003).

Six different variables are used to assess the impact of infrastructure

availability on export performance. These variables are rail carrying capacity (tonnes), public-sector infrastructure fixed capital stock (R million, 1995 prices)47, roads paved (km), the share of total roads paved, electricity generated (gigawatts), electricity, water and gas fixed capital stock, communication fixed capital stock and telephone mainlines per 1000 people.48 Figure 12 to Figure 14 present trends in these various indicators of infrastructure from 1970. Many of the infrastructure variables are expressed as a ratio to real manufacturing GDP.

As shown in Figure 12, public sector capital stock, which rose strongly

from the 1960s to the early 1980s, has failed to keep pace with the recovery in manufacturing output growth during the 1990s. The downward trend during the 1990s has occurred despite the expansion programmes by Telkom and Eskom to extend telephone lines and electricity to areas which were under-serviced. Similarly, the collapse in railway infrastructure investment from the 1980s led to a decline in the number of locomotives, coaching stock and goods stock and an eventual decline in goods stock carrying capacity from the late 1980s. The paving of national and provisional roads, however, roughly kept pace with manufacturing GDP growth.

The strongest growth in infrastructure capital stock has occurred in

communications infrastructure. Telephone mainlines have grown consistently from the early 1900’s, rising from 41 telephones per 1000 people in 1970 to 112 in 2001. The growth in the roll-out of fixed lines accelerated in 1997 with the 5-year capital expansion programme required in terms of Telkom’s service licence, but non-payment of telephone bills and competition from mobile market has led to many of these new connections being disconnected. Not presented in Figure 14 is the very rapid rise in mobile during the 1990s.

Despite the rapid growth in communication infrastructure, South Africa’s

telecommunications prices compare very poorly with international best practice (Truen, 2005). Compared to its developing-country peers, South African telecommunication prices are found to be the most expensive in seven of 10 product categories analysed. SA’s cost disadvantage also extends to cell telephony with business cellphone calls the second most expensive in the sample analysed by Truen (2005).49 South Africa also lags many middle-income countries in terms of the number of fixed lines per 1000 people (139 for lower middle income and 208 for

47 Public-sector investment consists of investment by the government and public corporations such as Transnet (rail and air transport services), Eskom (electricity) and Telkom.

48 The data are sourced from Perkins (2003), Quantech (2004) and the World Development Indicators Paved roads and share roads paved are updated using data obtained from World Development Indicators.

49 The countries include: Canada, Hong Kong, Israel, Norway, Singapore, Sweden, South Korea, US, Brazil, India, Malaysia, Morocco, the Philippines and Thailand.

37

upper middle income countries in 2001) and the number of telephone faults per fixed lines (40 faults per 100 fixed lines in 2000) (Perkins, 2003).

Figure 12: Public-sector infrastructure capital stock

Public-sector infrastructure capital stock

0.00.00.00.00.00.00.00.00.00.00.0

1970

1972

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ck (R

bill,

19

95 p

rices

)

Capital stock/Manufacturing GDP Capital stock, level

Note: Public-sector infrastructure fixed capital stock includes transport, communication, power, water and sanitation systems.

Figure 13: Transport infrastructure to manufacturing GDP

Transport infrastructure

0.0

0.1

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38

Figure 14: Communication infrastructure

Communications infrastructure

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Communication K stock Telephone mainlines

The econometric analysis shows that access to good rail infrastructure is

an important determinant of manufacturing export performance. The short-run coefficient on rail carrying capacity is positive and significant for all the reduced form regression results shown in Table 10 and Table 11. The long-run coefficients are positive and significant for aggregate manufacturing and range from 2 to 4.7, suggesting a high responsiveness in manufacturing exports to rail carrying capacity.

Public-sector infrastructure fixed capital stock, paved roads, electricity

generated and electricity, gas and water fixed capital stock also positively affect export performance, but primarily in the short run (Table 12). A 1% increase in public-sector infrastructure capital relative to manufacturing GDP is shown to raise average manufacturing exports by 2.4% in the long-run. An increase in the price of fuel relative to producer prices is also found to negatively affect export performance, particularly during the 1980s. This relationship, however, is not consistent across the industry groupings. No significant results are found for communication related infrastructure.

Table 12: Impact of various infrastructure variables on export performance, reduced form results

Infrastructure variables as ratio of total manufacturing GDP Coefficient Rail carrying capacity (tonnes) Long-run 1.95 * Short-run 1.78 ** Public-sector infrastructure fixed capital stock (Rmill 1995 prices) Long-run 2.37 ** Short-run 1.89 *** Roads paved (km) Long-run 1.62 ns Short-run 1.70 *** Roads paved, share Long-run -0.70 ns Short-run -1.62 *

39

Electricity generated (gigawatt hours) Long-run 0.66 ns Short-run 2.07 *** Electricity, gas and steam capital stock (Rmill 1995 prices) Long-run 0.75 * Short-run 1.27 *** Communication capital stock (Rmill 1995 prices) Long-run 0.03 ns Short-run 0.16 ns Telephone mainlines (Unit: per 1,000 people) Long-run 0.12 ns Short-run 0.36 ns

Note: All variables, except telephone mainlines, are expressed relative to total manufacturing GDP. All infrastructure variables are in natural logarithms. The coefficients are obtained from the reduced form specification using foreign output deflators over the period 1970-99. As shown in Table, the long-run coefficient on rail carrying capacity is significant at the 5% level when the sample is restricted to the 1980s and 1990s. The coefficient on electricity capital stock (1.77) is also significant in the long-run during the period 1980-99.

The importance of infrastructure for export performance is also revealed

in manufacturing firm-level data. Figure 15 and Figure 16 present the percentage of firms finding telecommunications, postal services and transport services an obstacle to their operations. The data are obtained from the National Enterprise Survey conducted in late 1999 (Gelb, 2002). The NE survey is national in coverage and consists of 941 manufacturing firms, 39 % of which are large firms consisting of more than 50 employees.

A relatively high percentage of exporters relative to domestic-oriented

firms find that the cost, reliability and speed of communication, postal and transport services are an obstacle to their operations. This is particularly evident in relation to freight handling in harbours, airports, airlines and railways where up to 44% of exporters found the cost and reliability of these services problematic (Figure 16).50 Poor port infrastructure is primarily a problem for manufacturing exports as primary exports (coal and iron ore) are channelled through specialised ports such as Saldahna and Richard’s Bay.

These results provide strong evidence that poor infrastructure investment from the mid-1980s has curtailed the growth of manufacturing exports. Non-communication infrastructure investment has failed to keep pace with manufacturing GDP growth. Export supply functions and firm surveys suggest that exporters are more susceptible to poor transport infrastructure than domestic-oriented firms. Improvement in infrastructure is therefore essential if manufacturing export growth is to be raised.

50 The differences are significant at the 5% level.

40

Figure 15: Percentage firms finding telecommunications and postal services an obstacle to their operations, National Enterprise Survey, 1999

Telecommunications, power and postal infrastructure constraints

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t of i

nter

net

acce

ss

Rel

iabi

lity/

spee

dof

inte

rnet

acce

ss

% fi

rms e

xper

ienc

ing

obst

acle

s to

oper

atio

n

Non-exportersExporters

Note: Responses are significantly different for the reliability/speed of postal services and the cost of power supplies, international telephone calls and internet access.

Figure 16: Percentage firms finding transport services an obstacle to their operations, National Enterprise Survey, 1999

A. Reliability and speed of freight handling

0

5

10

15

20

25

30

35

40

45

Harbours Airports Airlines Railways Road transport

% fi

rms e

xper

ienc

ing

obst

acle

s to

oper

atio

n

Non-exportersExporters

B. Cost of freight or freight handling

0

5

10

15

20

25

30

35

40

45

50

Handling servicesat harbours

Sea freight Airlines Railways Road transport

% fi

rms e

xper

ienc

ing

obst

acle

s to

oper

atio

n

Non-exportersExporters

Notes: Responses are significantly different from each other for all but the reliability and speed of road transport. Firms could select between four options: obstacle, neutral, beneficial and not relevant.

41

Tariffs and export support measures The decline in nominal and effective protection rates during the 1990s will

have had two important effects on export production.

• Firstly, lower tariffs reduce the cost of imported intermediate and capital goods and thus raise the profitability of export production.

• Secondly, lower effective protection rates reduce the incentive to produce for the domestic market relative to the export market. Together lower intermediate costs and lower effective protection rates reduce the anti-export bias of the trade regime.

We find some evidence that tariff liberalisation has improved export

performance. Using simple cross-sector regressions, we find that sectors experiencing high average protection (nominal and effective), implicit export taxes from tariff protection and anti-export biases have on average lower levels of export orientation. Only the relationship between export orientation and effective protection rates is significant at the 5% level. These relationships do not show causality as other factors such as comparative advantage may account for the high protection rates and low levels of export orientation in some sectors. Nevertheless, they are suggestive of a negative impact of tariff protection on export performance.

To assess the impact of changes in protection and the anti-export bias on

export performance over time, we re-estimate the reduced form export functions using a static fixed effects model over the period 1988-2002. Significant (at 5% level) negative coefficients are found on the export tax variable (-0.57) and the effective protection rate variable (-0.003).51 Tariff reductions have therefore boosted export performance by reducing intermediate input costs as well as lowering the incentive to produce for the domestic market.

Import penetration, which can be interpreted as a proxy for the impact of

tariff liberalisation on export performance, is also found to positively affect aggregate manufacturing exports. Import penetration affects exports by (a) improving access to imported intermediate inputs, (b) enhancing productivity growth (Jonnson and Subramanian, 2000) and lowering mark-ups and hence the relative incentive to produce for the domestic market (Fedderke et al. 2003, Edwards and van de Winkel, 2005). The econometric estimates show that a 1% rise in import penetration raises aggregate manufacturing exports by 0.37% to 0.55% in the long-run.52 Although the long-run coefficients are not significant for the sub-groupings, the short-run coefficients are significant and suggest that a 1% rise in import penetration is concurrently associated with a 0.27% to 0.79% increase in export growth.

51 Most of the other coefficients were insignificant. Trend output and deviation from trend output were generally significant and of the expected sign.

52 This result is consistent with that of Kahn and Knight (1988) who find a negative relationship between the cost of imported intermediate inputs and export performance in a pooled sample of 34 developing countries (including South Africa).

42

4. Conclusions and Policy Recommendations This study yields a number of insights regarding the composition and

determinants of manufacturing export growth in South Africa

South African export growth during the 1990s is shown to be mediocre

compared to many developing economies and other similar natural resource abundant economies. Exports also remain concentrated in natural resource-based products and products with a declining share of world markets. In contrast, East Asian economies have successfully restructured production towards dynamic high technology products. The inability to re-structure exports towards these dynamic high technology products is one explanation for the relatively poor export performance of South Africa during the 1990s.

The relatively poor manufacturing export growth can, in part, be

attributed to South Africa’s comparative advantage in natural resource-based products that have declined as a share of world trade. However, South African manufacturing export performance has been poor even relative to other similar resource-based economies. This suggests that South Africa has not fully exploited all opportunities to expand exports.

This study finds that foreign export demand in terms of market access is

not a constraint to export growth. South African manufacturing exporters are predominantly price-takers in the international market and face an infinite demand for their products. Changes in foreign demand, however, impact upon export supply through changes in the international price.

The constraint to growth lies on the side of export supply. Manufacturing

exporters have responded positively to the real depreciation of the currency and trade has dampened the response by exporters and inhibited further diversification of exports.

Declining infrastructure investment, particularly in transport

infrastructure (ports, railways and roads), has dampened the response of manufacturing exports to the more favourable trade environment in the 1990s. Other factors such as the availability of skills are also shown to be important determinants of export growth, particularly within the high technology metal products sectors.

These findings carry various policy implications if South African

policymakers wish to accelerate manufacturing export growth.

(i) First, improving the rail, harbour and road infrastructure is of paramount importance if export growth, particularly of high technology products, is to improve. The proposed government strategy to invest R180-billion on transport logistics, electricity and water resources is a positive step in this direction. Recent work on infrastructure and

43

growth in South Africa (e.g., Bogetić and Fedderke, 2005a,b) also suggests that there are substantial infrastructure investment needs in the coming years.

(ii) Second, human capital accumulation needs to be fostered as this both enhances export growth and diversification into high technology products. Investments in education, especially in terms of quality (particularly maths and science), will also boost productivity and output growth (Fedderke, 2005) and thereby export performance. Much has been accomplished to raise the enrolment rates, but learning outcomes and skills build-up have not matched expectations relative to the needs of the needs of the formal and export oriented sectors, especially those in high technology products.

(iii) Third, investments in R & D deserve more scrutiny by both public and private sectors. As shown elsewhere (Fedderke, 2005), total factor productivity gains, while rising, have been insufficient to offset sluggish contributions of factor accumulation and propel South Africa’s growth to a higher trajectory. Increased R & D and more favourable environment for technological innovation with appropriate incentives schemes could, potentially, help develop new products, technologies and markets. We believe that this is an area that South Africa’s private and public sectors could look more systematically, and in partnership, as an important source of longer term growth (see below).

(iv) Fourth, a stable, competitive real exchange rate is an important tool to encourage manufacturing export growth. The increasing credibility of the central bank’s inflation targeting framework and very low and stable inflation in the past two years have established a solid policy basis for a more stable nominal and real exchange rates in the future.

(v) Fifth, further simplifications of the tariff regime are possible. Although tariffs are already relatively low, the number of different tariff rates (102 in 2004, including non-ad valorem tariffs) is high and considerable variation of tariff rates at the 8-digit HS level remains. Although the ability to reform the tariff structure is constrained by the numerous trade agreements currently being negotiated, it is possible to at least simplify the MFN schedule by unifying tariff levels within the 4-digit HS code and reducing the number of tariff rates to 6, as agreed with the WTO. This simplification is particularly important, as future bilateral trade negotiations may entrench the existing complexity of the tariff structure.

(vi) Sixth, thought could be given to carefully designed incentives provided only to “new” products and activities aimed at further diversifying the economic export base. Any such incentives would need to be crafted carefully towards specific activities, not sectors, with clear benchmarks/criteria for success or failure, and built-in sunset clauses, and partnerships between the public and private sector in order to facilitate the process of “discovery” of new export opportunities and new products (Rodrik, 2004). Importantly, this is not to argue for the traditional industrial policy for “picking winners”. It just stresses the need for the public and private sector in South Africa to engage in a more innovative and intensive processes of learning by doing in order to develop new

44

products and technologies, and to enter new markets in a similar fashion to Chile and the salmon industry, for example, or Taiwan and the orchid industry. South Africa could learn from these and similar international success stories of export diversification and development of new markets, which sometimes may require more than just relying on stable real exchange rates and trade liberalization alone.

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Appendix A: The “Resource Group” of countries To construct the Resource Group, countries with populations over one million

and consistently recorded export data were ranked according to average share of primary products and resource based manufactures in total exports between 1988 and 1990. 10% of the sample on either side of South Africa’s mean value were then selected as the the comparator group.53 The process yielded the list of countries in Table A. It is worth mentioning that these countries were not the most resource intensive exporters in 1988-1990 (by this measure). Twenty-six countries, mainly from Africa, had ratios higher than that of Malawi, the most resource intensive country in the selected group.

Table A: Similar export structures, 1988-1990

(RB+PP)/ TX (RB+PP)/

TX Malawi 0.95 Peru 0.81 Senegal 0.94 Guatemala 0.79 Paraguay 0.94 Nigeria 0.78 Chile 0.94 Indonesia 0.76 Algeria 0.91 Argentina 0.72 Tanzania 0.91 Colombia 0.71 Kenya 0.89 Costa Rica 0.71 Benin 0.88 Zimbabwe 0.71 Madagascar 0.88 El Salvador 0.68 Australia 0.86 Uruguay 0.65 Ethiopia 0.84 Venezuela 0.61 New Zealand 0.83 Morocco 0.61 South Africa 0.83 Norway 0.58

Source: as before Note: ‘PP’ = primary products; ‘RB’ = resource based manufactures; TX = total exports. All data represent 1988-1990 averages.

Appendix B: Industrial sectors, variable descriptions and data sources

Table B1: Industrial classification Industry Industry

1 Food [301-304] 15 Plastic products [338] 2 Beverages [305] 16 Glass and glass products [341] 3 Tobacco [306] 17 Non-metallic minerals [342] 4 Textiles [311-312] 18 Basic iron and steel [351] 5 Wearing apparel [313-315] 19 Basic non-ferrous metals [352]

53 Alternative approaches have been followed in the international literature. UNIDO (2004) classify economies as resource rich if natural resource based exports as a percentage of GDP exceeds 20%. Some further modifications are made to ensure the inclusion of mineral-rich economies into this sample. Wood and Berge (1997), Mayer, (1997) and Wood & Mayer (1998) all use land area (km2) per capita and classify economies as resource rich if their ratio is above the sample median.

51

6 Leather and leather products [316] 20Metal products excluding machinery

[353-355] 7 Footwear [317] 21 Machinery and equipment [356-359]

8 Wood and wood products [321-322] 22 Electrical machinery and apparatus [361-366]

9 Paper and paper products [323] 23Television, radio and communication

equipment [371-373]

10 Printing, publishing and recorded media [324-326] 24

Professional and scientific equipment [374-376]

11 Coke and refined petroleum products [331-333] 25Motor vehicles, parts and accessories

[381-383] 12 Basic chemicals [334] 26 Other transport equipment [384-387] 13 Other chemicals and man-made fibers [335-336] 27 Furniture [391] 14 Rubber products [337] 28 Other manufacturing [392-393]

Table B2: Variables descriptions and sources

Variable Description Source output output, R mill, 1995 prices QUANTECH export exports, R mill, 1995 prices QUANTECH px export price, 1995=100 QUANTECH mpenet import penetration, 1995 prices QUANTECH imports imports, R mill, 1995 prices QUANTECH ppidom PPI of output for South African consumption, 2000=1 SSA

pfor Weighted output price deflator (1995=100) of developed economies (US, UK, Spain, Netherlands, Japan, Canada). Uses total weights in Walter & De Beer (1999).

UNIDO INSTAT 2001

qfor Weighted real output index (1995 = 100) of developed economies (US, UK, Spain, Netherlands, Japan, Canada). Uses total weights in Walter & De Beer (1999).

UNIDO INSTAT 2001

ppifuel PPI: Petrol, 93 octane - Witwatersrand (Unit: Index : 2000=100) SSA [P0142.1: Table 16]

neer Nominal effective exchange rate. Calculated using Walter and De Beer (1999) weights IMF IFS

ppicons PPI: Consumption in SA (Unit: Index : 2000=100), includes domestic produced and imported goods

SSA [P0142.1: Table 10].

ulc wage nominal/lprod QUANTECH data

ulcr ulc/ppidom skill_unsk Highly skilled/(skilled+semi+unsk) QUANTECH K/L Machinery & equipment capital stock R mill in 1995 prices per worker QUANTECH LNoutputHP Hodrick Prescott filter of log(output), lambda = 7 dLNqHP LNoutputHP-log(output) userate R/US$ exchange rate IMF IFS uspm US import price index, constructed from SITC classified data BLS

tar_s Scheduled rates including surcharges

WITS, Government Gazettes

erp_s Effective rates of protection, calculated using tar_s and 2000 SU table aeb_s anti-export bias (aeb = (1+erp)/(1-xtax)), incl surcharges xtax_s export tax (tax on intermediates/va at Pw), incl. surcharges tel Telephone mainlines (Unit: per 1,000 people) WDI rcapq Rail carrying capacity/manufacturing GDP Perkins (2003) ifcsq Infrastructure Capital stock /manufacturing GDP (R mill in 1995 prices) Perkins (2003) road Paved roads (km) Perkins (2003) elect Electricity generated (gigawatts) Perkins (2003) electk Electricity, water and gas fixed capital stock (R million, 1995 prices) QUANTECH

relpfuel PPI: Petrol, 93 octane - Witwatersrand (Unit: Index : 2000=100)/domestic PPI SSA [P0142.1: Table 16]

relppfor pfor*neer/ppidom relppusm uspm*neer/ppidom

52

Africa Region Working Paper Series

Series # Title Date Author

ARWPS 1 Progress in Public Expenditure Management in Africa: Evidence from World Bank Surveys

January 1999

C. Kostopoulos

ARWPS 2 Toward Inclusive and Sustainable Development in the Democratic Republic of the Congo

March 1999

Markus Kostner

ARWPS 3 Business Taxation in a Low-Revenue Economy: A Study on Uganda in Comparison with Neighboring Countries

June 1999

Ritva Reinikka

Duanjie Chen

ARWPS 4 Pensions and Social Security in Sub-Saharan Africa: Issues and Options

October 1999

Luca Barbone

Luis-A. Sanchez B.

ARWPS 5 Forest Taxes, Government Revenues and the Sustainable Exploitation of Tropical Forests

January 2000

Luca Barbone

Juan Zalduendo

ARWPS 6 The Cost of Doing Business: Firms’ Experience with Corruption in Uganda

June 2000

Jacob Svensson

ARWPS 7 On the Recent Trade Performance of Sub-Saharan African Countries: Cause for Hope or More of the Same

August 2000

Francis Ng and Alexander J. Yeats

ARWPS 8 Foreign Direct Investment in Africa: Old Tales and New Evidence

November 2000

Miria Pigato

ARWPS 9 The Macro Implications of HIV/AIDS in South Africa: A Preliminary Assessment

November 2000

Channing Arndt

Jeffrey D. Lewis

ARWPS 10

Revisiting Growth and Convergence: Is Africa Catching Up?

December 2000

C. G. Tsangarides

ARWPS 11

Spending on Safety Nets for the Poor: How Much, for

How Many? The Case of Malawi

January 2001

William J. Smith

ARWPS 12

Tourism in Africa

February 2001

Iain T. Christie

D. E. Crompton

ARWPS 13

Conflict Diamonds Louis Goreux

53

February 2001

ARWPS 14

Reform and Opportunity: The Changing Role and Patterns of Trade in South Africa and SADC

March 2001

Jeffrey D. Lewis

ARWPS 15

The Foreign Direct Investment Environment in Africa

March 2001 Miria Pigato

ARWPS 16

Choice of Exchange Rate Regimes for Developing Countries

April 2001

Fahrettin Yagci

ARWPS 18

Rural Infrastructure in Africa: Policy Directions

June 2001

Robert Fishbein

ARWPS 19

Changes in Poverty in Madagascar: 1993-1999

July 2001

S. Paternostro

J. Razafindravonona David

Stifel

ARWPS 20

Information and Communication Technology, Poverty, and Development in sub-Saharan Africa and South Asia

August 2001

Miria Pigato

ARWPS 21

Handling Hierarchy in Decentralized Settings: Governance Underpinnings of School Performance in Tikur Inchini, West Shewa Zone, Oromia Region

September 2001

Navin Girishankar A.

Alemayehu

Yusuf Ahmad

ARWPS 22

Child Malnutrition in Ethiopia: Can Maternal Knowledge Augment The Role of Income?

October 2001

Luc Christiaensen

Harold Alderman

ARWPS 23 Child Soldiers: Preventing, Demobilizing and Reintegrating

November 2001

Beth Verhey

ARWPS 24 The Budget and Medium-Term Expenditure Framework in Uganda

December 2001

David L. Bevan

ARWPS 25 Design and Implementation of Financial Management Systems: An African Perspective

January 2002

Guenter Heidenhof H. Grandvoinnet Daryoush Kianpour B. Rezaian

ARWPS 26

What Can Africa Expect From Its Traditional Exports?

February 2002

Francis Ng

Alexander Yeats

ARWPS 27

Free Trade Agreements and the SADC Economies

February 2002

Jeffrey D. Lewis

Sherman Robinson

54

Karen Thierfelder

ARWPS 28

Medium Term Expenditure Frameworks: From Concept to Practice. Preliminary Lessons from Africa

February 2002

P. Le Houerou Robert Taliercio

ARWPS 29

The Changing Distribution of Public Education Expenditure in Malawi

February 2002

Samer Al-Samarrai

Hassan Zaman

ARWPS 30 Post-Conflict Recovery in Africa: An Agenda for the Africa Region

April 2002

Serge Michailof

Markus Kostner

Xavier Devictor

ARWPS 31

Efficiency of Public Expenditure Distribution and Beyond: A report on Ghana’s 2000 Public Expenditure Tracking Survey in the Sectors of Primary Health and Education

May 2002 XiaoYe S. Canagaraja

ARWPS 33

Addressing Gender Issues in Demobilization and Reintegration Programs

August 2002

N. de Watteville

ARWPS 34

Putting Welfare on the Map in Madagascar

August 2002

JohanA.Mistiaen BerkSoler T.Razafimanantena J. Razafindravonona

ARWPS 35

A Review of the Rural Firewood Market Strategy in West Africa

August 2002

Gerald Foley

Paul Kerkhof

Djibrilla Madougou

ARWPS 36

Patterns of Governance in Africa

September 2002

Brian D. Levy

ARWPS 37

Obstacles and Opportunities for Senegal’sInternational Competitiveness: Case Studies of the Peanut Oil, Fishing and Textile Industries

September 2002

Stephen Golub

Ahmadou Aly Mbaye

ARWPS 38

A Macroeconomic Framework for Poverty Reduction Strategy Papers : With an Application to Zambia

October 2002 S.Devarajan Delfin S. Go

ARWPS 39 The Impact of Cash Budgets on Poverty Reduction in Zambia: A Case Study of the Conflict between Well Intentioned Macroeconomic Policy and Service Delivery to the Poor

November 2002

Hinh T. Dinh

Abebe Adugna

Bernard Myers

Decentralization in Africa: A Stephen N. Ndegwa

55

ARWPS 40 Stocktaking Survey November 2002

ARWPS 41

An Industry Level Analysis of Manufacturing Productivity in Senegal

December 2002

Professor A. Mbaye

ARWPS 42

Tanzania’s Cotton Sector: Constraints and Challenges in a Global Environment

December 2002

John Baffes

ARWPS 43

Analyzing Financial and Private Sector Linkages in Africa

January 2003

Abayomi Alawode

ARWPS 44

Modernizing Africa’s Agro-Food System: Analytical Framework and Implications for Operations

February 2003

Steven Jaffee

Ron Kopicki

Patrick Labaste

Iain Christie

ARWPS 45 Public Expenditure Performance in Rwanda

March 2003

Hippolyte Fofack

C. Obidegwu

Robert Ngong

ARWPS 46

Senegal Tourism Sector Study

March 2003

Elizabeth Crompton

Iain T. Christie

ARWPS 47 Reforming the Cotton Sector in SSA

March 2003

Louis Goreux

John Macrae

ARWPS 48 HIV/AIDS, Human Capital, and Economic Growth Prospects for Mozambique

April 2003

Channing Arndt

ARWPS 49 Rural and Micro Finance Regulation in Ghana: Implications for Development and Performance of the Industry

June 2003

William F. Steel

David O. Andah

ARWPS 50

Microfinance Regulation in Benin: Implications of the PARMEC LAW for Development and Performance of the Industry

June 2003

K. Ouattara

ARWPS 51

Microfinance Regulation in Tanzania: Implications for Development and Performance of the Industry

June 2003

BikkiRandhawa Joselito Gallardo

Regional Integration in Central Africa: Ali Zafar

56

ARWPS 52 Key Issues June 2003 Keiko Kubota

ARWPS 53 Evaluating Banking Supervision in Africa

June 2003

Abayomi Alawode

ARWPS 54 Microfinance Institutions’ Response in Conflict Environments: Eritrea- Savings and Micro Credit Program; West Bank and Gaza – Palestine for Credit and Development; Haiti – Micro Credit National, S.A.

June 2003

Marilyn S. Manalo

AWPS 55 Malawi’s Tobacco Sector: Standing on One Strong leg is Better than on None

June 2003

Steven Jaffee

AWPS 56 Tanzania’s Coffee Sector: Constraints and Challenges in a Global Environment

June 2003

John Baffes

AWPS 57 The New Southern AfricanCustoms Union Agreement

June 2003

Robert Kirk Matthew Stern

AWPS 58a How Far Did Africa’s First Generation Trade Reforms Go? An Intermediate Methodology for Comparative Analysis of Trade Policies

June 2003

Lawrence HinkleA. Herrou-AragonKeiko Kubota

AWPS 58b How Far Did Africa’s First Generation Trade Reforms Go? An Intermediate Methodology for Comparative Analysis of Trade Policies

June 2003

Lawrence HinkleA. Herrou-AragonKeiko Kubota

AWPS 59 Rwanda: The Search for Post-Conflict Socio-Economic Change, 1995-2001

October 2003

C. Obidegwu

AWPS 60 Linking Farmers to Markets: Exporting Malian Mangoes to Europe

October 2003 Morgane DanielouPatrick LabasteJ-M. Voisard

AWPS 61 Evolution of Poverty and Welfare in Ghana in the 1990s: Achievements and Challenges

October 2003

S. CanagarajahClaus C. Pörtner

AWPS 62 Reforming The Cotton Sector in Sub-Saharan Africa: SECOND EDITION

November 2003

Louis Goreux

AWPS 63 (E) Republic of Madagascar: Tourism Sector Study

November 2003

Iain T. ChristieD. E. Crompton

AWPS 63 (F) République de Madagascar: Etude du Secteur Tourisme

November 2003 Iain T. ChristieD. E. Crompton

57

AWPS 64 Migrant Labor Remittances in Africa: Reducing Obstacles to Development Contributions

Novembre 2003

Cerstin Sander

Samuel M. Maimbo

AWPS 65 Government Revenues and Expenditures in Guinea-Bissau: Casualty and Cointegration

January 2004

Francisco G. Carneiro

Joao R. Faria

Boubacar S. Barry

AWPS 66

How will we know Development Results when we see them? Building a Results-Based Monitoring and Evaluation System to Give us the Answer

June 2004

Jody Zall Kusek

Ray C. Rist

Elizabeth M. White

AWPS 67

An Analysis of the Trade Regime in Senegal (2001) and UEMOA’s Common External Trade Policies

June 2004

Alberto Herrou-Arago

Keiko Kubota

AWPS 68

Bottom-Up Administrative Reform: Designing Indicators for a Local Governance Scorecard in Nigeria

June 2004

Talib Esmail

Nick Manning

JanaOracGalia Schechter

AWPS 69

Tanzania’s Tea Sector: Constraints and Challenges

June 2004

John Baffes

AWPS 70

Tanzania’s Cashew Sector: Constraints and Challenges in a Global Environment

June 2004

Donald Mitchell

AWPS 71

An Analysis of Chile’s Trade Regime in 1998 and 2001: A Good Practice Trade Policy Benchmark

July 2004

Francesca Castellani

A. Herrou-Arago

Lawrence E. Hinkle

AWPS 72 Regional Trade Integration inEast Africa: Trade and Revenue Impacts of the Planned East African Community Customs Union

August 2004

Lucio Castro

Christiane Kraus

Manuel de la Rocha

AWPS 73 Post-Conflict Peace Building in Africa: The Challenges of Socio-Economic Recovery and Development

August 2004

Chukwuma Obidegwu

AWPS 74

An Analysis of the Trade Regime in Bolivia in2001: A Trade Policy Benchmark for low Income Countries

August 2004

Francesca Castellani

Alberto Herrou-Aragon

Lawrence E. Hinkle

AWPS 75

Remittances to Comoros- Volumes, Trends, Impact and Implications

October 2004

Vincent da Cruz

Wolfgang Fendler

58

Adam Schwartzman

AWPS 76

Salient Features of Trade Performance in Eastern and Southern Africa

October 2004

Fahrettin Yagci

Enrique Aldaz-Carroll

AWPS 77

Implementing Performance-Based Aid in Africa

November 2004

Alan Gelb

Brian Ngo

Xiao Ye

AWPS 78 Poverty Reduction Strategy Papers: Do they matter for children and Young people made vulnerable by HIV/AIDS?

December 2004

Rene Bonnel

Miriam Temin

Faith Tempest

AWPS 79 Experience in Scaling up Support to Local Response in Multi-Country Aids Programs (map) in Africa

December 2004

Jean Delion

Pia Peeters

Ann Klofkorn Bloome

AWPS 80

What makes FDI work? A Panel Analysis of the Growth Effect of FDI in Africa

February 2005

Kevin N. Lumbila

AWPS 81 Earnings Differences between Men and Women in Rwanda

February 2005

Kene Ezemenari

Rui Wu

AWPS 82

The Medium-Term Expenditure Framework

The Challenge of Budget Integration in SSA countries

April 2005

Chukwuma Obidegwu

AWPS 83 Rules of Origin and SADC: The Case for change in the Mid Term Review of the Trade Protocol

June 2005

Paul Brenton

Frank Flatters

Paul Kalenga

AWPS 84 Sexual Minorities, Violence and AIDS in Africa

July 2005

Chukwuemeka Anyamele

Ronald Lwabaayi

Tuu-Van Nguyen, and Hans Binswanger

AWPS 85 Poverty Reducing Potential of Smallholder Agriculture in Zambia:

Opportunities and Constraints

July 2005

Paul B. Siegel

Jeffrey Alwang

AWPS 86 Infrastructure, Productivity and Urban Dynamics in Côte d’Ivoire An empirical analysis and policy implications

July 2005

Zeljko Bogetic

Issa Sanogo

59

AWPS 87 Poverty in Mozambique: Unraveling Changes and Determinants

August 2005

Louise Fox

Elena Bardasi,

Katleen Van den Broeck

AWPS 88

Operational Challenges: Community Home Based Care (CHBC) forPLWHA in Multi-Country HIV/AIDS Programs (MAP) forSub-Saharan Africa

August 2005

Nadeem Mohammad

Juliet Gikonyo

AWPS 89

Framework for Forest Resource Management in Sub-Saharan Africa

August 2005

Giuseppe Topa

AWPS 90

Kenya: Exports Prospects and Problems

September 2005

Francis Ng

Alexander Yeats

AWPS 91

Uganda: How Good a Trade Policy Benchmark for Sub-Saharan-

Africa

September 2005

Lawrence E. Hinkle

Albero Herrou Aragon

RangaRajanKrishnamaniElke Kreuzwieser

AWPS 92

Community Driven Development in South Africa, 1990-

2004

October 2005

David Everatt Lulu Gwagwa

AWPS 93

The Rise of Ghana’’s Pineapple Industry from Successful take off to

Sustainable Expansion

November 2005

Morgane Danielou

Christophe Ravry

AWPS 94

South Africa: Sources and Constraints of Long-Term Growth,

1970-2000

December 2005

Johannes Fedderke

AWPS 95

South Africa: Determinants of Export Supply

December 2005

Lawrence Edwards

Phil Alves

60