fiscal decentralization and economic growth in the oecd
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Fiscal decentralization and economic growth in theOECDPhilip Bodman aa School of Economics, University of Queensland , Brisbane, 4072 QLD, AustraliaPublished online: 07 Oct 2010.
To cite this article: Philip Bodman (2011) Fiscal decentralization and economic growth in the OECD, Applied Economics,43:23, 3021-3035, DOI: 10.1080/00036840903427208
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Applied Economics, 2011, 43, 3021–3035
Fiscal decentralization and
economic growth in the OECD
Philip Bodman
School of Economics, University of Queensland, Brisbane, 4072 QLD,
Australia
E-mail: [email protected]
What impact, if any, does Fiscal Decentralization (FD) have on economic
growth? Further investigations of the inter-relationships between FD and
economic growth are timely given that government decentralization
remains at the forefront of many Organization for Economic
Cooperation and Development (OECD) policy agendas. This study
incorporates a range of measures of FD to better account for the direct
impact of different levels of subnational fiscal autonomy on economic
growth. The analysis also considers the impact of previously omitted
public sector decentralization variables that provide further indication of
the extent to which Subnational Governments (SNG) are ‘closer to the
people’ and potentially better able to account for local preferences in fiscal
decision-making. Whilst little evidence of a direct relationship between FD
and output growth is found, some evidence is found to suggest that federal
systems tend to have lower growth rates than do unitary states,
independent of their degree of decentralization, and that countries with
more elected tiers of government generally have lower economic growth.
I. Introduction
FISCAL DECENTRALIZATION is in vogue.Wallace E. Oates (1999)
Fiscal decentralization (FD) is once again a hot topic
amongst policy-makers. Out of 75 developing and
transitional countries with populations greater than
five million, all but 12 claim to have embarked on
some form of government decentralization initiative
over the last decade.1 FD has also featured in the
recent policy agendas of many Organization for
Economic Cooperation and Development (OECD)
countries. For example, in the US, the Central
Government (CG) has returned significant portions
of federal authority to the states particularly con-
cerning areas such as welfare, Medicaid, education
and job training. In the UK, under the Blair
government, both Scotland and Wales opted for
their own regional parliaments.2 Australia has
recently experienced vigorous debate over the need
for reforms to its Commonwealth-State fis-
cal arrangements to improve the supply-side of
its economy, with the complex cobweb of
1 See Dillinger (1994).2 Similar responses to demands for greater regional autonomy in countries such as Belgium, Canada, Italy and Spain have ledto a serious push for increased decentralization of government structure (Patsouratis, 1990). In the EU, more generally, threehas been a significant transfer of power from national governments to both supranational authorities as well as to local andregional governments – the so-called ‘Sandwich hypothesis’ (Zimmermann, 1990).
Applied Economics ISSN 0003–6846 print/ISSN 1466–4283 online � 2011 Taylor & Francis 3021http://www.informaworld.com
DOI: 10.1080/00036840903427208
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intergovernmental relations accused of dragging backproductivity, creating export bottlenecks, infrastruc-ture shortages and even crisis in its health andeducation systems.3
But what exactly do economists mean by FD? In itsmost basic form, FD refers to the division ofbudgetary responsibilities between different levels ofgovernment. Of course, true decentralization is notsimply a geographical de-concentration of the CG’sbureaucracy or service delivery, rather it is essentiallylinked to the territorial distribution of power. TheCommonwealth Secretariat (1985) defines the decen-tralization of government as ‘the transfer of powerand/or authority to plan, make decisions and/ormanage public functions from a higher level ofgovernment to a lower one’.
Therefore, for the purpose of this article, FD refersto the amount of independent decision-making powerinvolved in subnational expenditure and revenuedecisions. The term ‘subnational’ collectively standsfor the levels of government below the nationalgovernment, both lower level governments (munici-palities, communes or local councils) and intermedi-ate tiers (regions, states, provinces, counties,territories or districts). ‘Decentralization’ is used inthe static sense to describe systems in whichresponsibilities are divided among tiers, rather thanin the dynamic sense of becoming ‘decentralized’.Thus, the extent of FD depends on the ability of lowerlevels of government to make independent revenue andexpenditure decisions regarding the provision of publicgoods and services within a geographic domain, withoutinterference by the CG.
Traditional discussions about the normative designof FD, and analyses of how decentralized systems
perform in practice, were not concerned with theeffects of FD on economic growth. Rather,Musgrave (1959) stated that the three main objectivesof government regarding public finance were effi-ciency, income redistribution and macroeconomicstability. The literature concerning FD and economicgrowth implicitly assumes that FD affects the growththrough its impact on these three factors. Therefore,the issue is whether or not changes in effi-ciency, macroeconomic stability and income redistri-bution resulting from increased (or decreased) FDhave a statistically significant impact on economicgrowth.
In summary, FD may be growth-enhancing if itleads to increased efficiency in the supply of publicgoods by considering local preferences (consumerefficiency)4 or if it leads to subnational innovations,cost reductions and productivity improving intergo-vernmental competition (producer efficiency).5
Alternatively, growth-impeding hypotheses can bepostulated from the suggestion that FD might leadto harmful competition, macroeconomic instability6
and a more unequal distribution of resources.7
Hence, the relationship between FD and economicgrowth is ambiguous.
Whilst there has been a huge amount of theoreticalliterature using endogenous growth models to explainthe significant effects government policies can haveon economic growth, there has been very little in theway of theoretical modelling of the direct relationshipbetween FD and economic growth.8 There has beenlittle effort to formally define the links between FDand growth via the channels of efficiency, macro-economic stability and equity and the modellingthat has been proposed is quite inadequate
3 See, for example, Garnaut (2006) and Twomey and Withers (2007).4 The notion that FD may affect efficiency is underpinned by the seminal work of Oates (1972). See Martinez-Vazquez andMcNab (1997) for a recent discussion.5Martinez-Vazquez and McNab (1997) and Thiessen (2000) assert that FD can foster experimentation and innovation in theproduction and supply of public goods. If such innovation leads to greater producer efficiency, then the higher quantity orquality of public goods could eventually result in increased income and therefore measured economic growth. However, thisnotion remains controversial. Bahl and Linn (1992) point out that greater centralization improves producer efficiency if agiven public service entails economies of scale or scope. Prud’homme (1995) argues that central bureaucracies operate closerto the technical production frontier as they tend to attract more qualified people due to greater career opportunitiesand have more scope to invest in technology, research, development and innovation. More recently, Adam et al. (2008)provide evidence in favour of a positive relationship between expenditure decentralization and the productive efficiencyof governments in the OECD, whilst Barankay and Lockwood (2007) find similar conclusions using a dataset of Swisscantons.6 The links between macroeconomic stability and FD have been highlighted in McLure (1995), Prud’homme (1995), Tanzi(1995, 2008), Sewell (1996) and Martinez-Vasquez and McNab (2005). A related literature has also been developing on‘soft budget constraints’ that explores in considerable depth the ways in which FD can, and potentially has, underminedfiscal performance in certain countries – see, for example, the volume edited by Rodden and Eskeland (2003).7 See Prud’homme (1995).8 Brueckner (2006) is an exception. In this article, an overlapping generations model is used to illustrate how decentralizationcan potentially lead to efficiency gains that lead to greater saving and capital accumulation and ultimately faster economicgrowth.
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(see Martinez-Vasquez and McNab (2003) for a
discussion).9
Of course, one should not necessarily expect amonotonic relationship between FD and growth.
That is, it may not be true that the moredecentralized a country’s fiscal system becomes, the
faster (or slower) that country grows. Rather,Thiessen (2000) and Eller (2004, p. 30) argue that
there is an optimal degree of FD, usually thought tobe some ‘medium degree’, that is less than complete
decentralization. Low levels of FD may not provideenough incentive for Subnational Governments
(SNGs) to improve allocative and productive effi-ciency. In this case, the fixed costs of maintaining
SNGs may outweigh any benefits in terms ofefficiency, hindering economic growth. Too much
FD may lead to macroeconomic instability andinequality, also having a negative impact on eco-
nomic growth in the long run.So given that one of the main stated objectives of
FD in many countries is to promote economic
growth, and given the current policy interest in
fiscal reforms in many developed countries, studies
of the relationship between FD and economic growth
are timely. It remains an open question as to whether
FD actually plays a statistically significant role in
enhancing or inhibiting economic growth. The few
previous estimates of the relationship between FD
and economic growth that are provided in the
literature are largely contradictory, and hence do
not resolve the potential theoretical ambiguity. Of the
cross-country studies, Oates (1995), Yilmaz (1999),
Iimi (2005) and Ding (2007) find a positive relation-
ship between FD and output growth. Davoodi and
Zou (1998) find a negative relationship for developing
countries and none for developed countries.
Similarly, Woller and Phillips (1998) find a negative
correlation for developing countries whilst Carrion-
i-Silvestre et al. (2008) find no effects of revenue
decentralization on growth and significant negative
effects of expenditure decentralization for Spain.
Thiessen’s (2000, 2003) and Eller’s (2004) results
support the hypothesis that a medium degree of FD
tends to best promote economic growth in OECD
countries. Similar evidence for the states of the US is
found by Akai et al. (2007).
II. Methodology
There is no clear theoretical framework to guideempirical work on the relationship between FD andeconomic growth. As Levine and Renelt (1992) pointout, there is no model that completely specifies thefactors that one should hold constant while conduct-ing statistical inference on the relationship betweengrowth and the economic variable of interest. Themost common approach in studies of FD andeconomic growth is to run informal growth regres-sions.10 The basic framework adopted by authorssuch as Davoodi and Zou (1998) and Iimi (2005), anda number of single country studies, uses a simpletheoretical model to justify the inclusion of FD ingrowth regressions. Other control variables arechosen from results in the literature, typicallyincluding those used by Levine and Renelt (1992) –the initial level of real Gross Domestic Product(GDP) per capita, the population growth rate, theinitial secondary school enrolment ratio (as a proxyfor initial human capital) and the investment to GDPratio.
Thiessen’s (2000, 2003) cross-country studies of FDand growth, and Lin and Liu’s (2000) analysis ofChina, use informal growth regressions loosely basedon the Mankiw et al. (1992) economic growth model.As these regressions include the investment ratio andinitial income, the authors insist that they can beinterpreted in terms of the Mankiw–Romer–Weil(MRW) model. However, this extension is not perfectas terms from the theoretical model, such as the initiallevel of efficiency, are omitted from the estimatedequation as they are unobservable or difficult toapproximate. The omitted variable problem meansthat if one or more regressors are correlated withthese terms, the parameter estimates will be biased.For instance, if countries with relatively low levels ofinitial efficiency tend to have low levels of decentral-ization, this correlation may mean that FD takes anegative sign when entered into a growth regression,even if it has no long-run effect on output. Therefore,Temple (1999) asserts that such informal growthregressions neglect important insights in the absenceof a formal theoretical derivation.
This article extends Thiessen’s (2000, 2003) analysisof the relationship between FD and economic
9 The quality of local government officials relative to CG officials and the extent of corruption at the local level also haveimplications for producer and consumer efficiency. However, these factors are more likely to be important for developingcountries than for the sample of OECD countries examined in this article.10An alternative approach, used in only in one previous study of FD and growth, is based on cross-country growthaccounting. This approach has a number of shortcomings. In particular, whilst this model considers the efficiency channelsthrough which FD affects growth, it can still be criticized on the grounds that it does not allow one to distinguish betweenconsumer or producer efficiency or determine FDs impact on growth through the channels of macroeconomic stability orinequality. See Eller (2004) for a discussion.
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performance in three useful ways. First, this articleuses static panel regressions with fixed time andindividual effects as well as pure cross-sectionregressions.11 Second, the analysis uses the newmeasures of FD developed by Stegarescu (2005),and includes more disaggregated ‘hump-shaped’indicators of FD. Third, the analysis includes anumber of other measures of government decentral-ization, omitted from previous studies of FD andgrowth that potentially provide a better indication ofthe extent to which SNGs are ‘closer to the people’and are therefore better able to account for localpreferences in fiscal decision-making and whichbetter differentiate between ‘administrative’ and‘substantive’ fiscal autonomy.
III. Data and Measurement
There is no single, or simple, measure of FD. FD is‘so multidimensional that specification of a formalhypothesis for statistical testing requires steppingdown from a view of the general picture, to a levelwhich provides only a narrow slice of the panorama’(Guess et al., 1997, p. 1). The first dimension of FDconsidered in this study concerns the formal divisionof expenditures and revenues between levels ofgovernment. The second, and most important dimen-sion, is the extent to which fiscal decision-making isdecentralized.
Measures used in previous analysis
The primary way of measuring FD is the ‘budgetdata’ approach. Previous cross-country studies of FDand growth have used budget data measurementsbased on the Government Financial Statistics (GFS)of the International Monetary Fund (IMF). Moststudies use the subnational share of General
Government (GG) expenditures (EXP) or revenues
(REV) as a proxy for decentralization.12 However,
three main deficiencies of the GFS are identified inthe literature.13 First, the GFS provides a breakdown
of revenues and expenditures by type and function,
but they are reported at the level of government that
receives or operates them, irrespective of whether ithas discretion over them. Thus, local expenditures
that are directed by the CG are included in
subnational expenditure. Second, it does not identifythe sources of revenues, and no distinction is made
between locally determined own taxes, piggybacked
or shared taxes. Third, it does not disclose the
proportion of intergovernmental transfers that areconditional or the criteria (objective or discretionary)
by which transfers are distributed. Therefore,
although GFS data has consistent definitions acrosscountries over time, it ignores the degree of CG
control over local revenues and expenditures. These
measurement errors mean that the degree of FD
tends to be overestimated.More general criticisms of the budget data
measurements include the fact that they do not reflect
restraints on local fiscal autonomy arising from
legislation, regulation, norms, minimum quality stan-dards and other qualitative restrictions imposed by
the CG. SNGs that have the autonomy to decide the
amount and type of tax to collect, and to determine
the allocation of their expenditure, are more decen-tralized than those whose spending and revenue is
determined by national legislation. Further, changes
in budget data measures over time do not necessarilyreflect changes in SNG autonomy. Stegarescu (2005)
claims that the tax bases of national and SNGs
typically have different elasticities. Therefore, busi-
ness cycles cause automatic fluctuations in the reve-nue indicators, even though the assignment of
competencies remains unchanged.Another problem with existing measures of FD is
that they aggregate all SNGs into a single group.
11 The advantages of using panel data or pooled cross-section regressions over pure cross-section regressions are welldocumented – they provide ‘more informative data, more variability, less collinearity among the variables, more degrees offreedom and more efficiency’ (Baltagi, 1996, p. 4). Therefore, it has the potential to produce more reliable parameterestimates. Panel data has the added advantage of allowing one to control for omitted variables that are persistent over time.Including country specific effects allows one to better control for individual heterogeneity. The inclusion of country and timespecific effects may also be necessary to inhibit correlation between the regressors due to contemporaneous time or countryshocks. Without these effects, there may be parameter heterogeneity, which could lead to meaningless estimates. Tests forparameter heterogeneity reject the hypothesis that the intercept can be held constant over countries and time, so this analysis,unlike Thiessen’s (2000, 2003), uses a static (within) panel framework with fixed time and individual effects.12 For example, Oates (1995), Davoodi and Zou (1998), Woller and Phillips (1998), Xie et al. (1998), Thiessen (2000, 2003),Eller (2004) and Iimi (2005). Oates (1995) and Thiessen (2000, 2003) also consider self-reliance ratios, the share of SNGsown revenues in their total revenues. Woller and Phillips (1998) use the share of SNG revenues, less grants, in totalgovernment revenue and construct an expenditure share subtracting defence and social security spending. They argue thatthese provide a better of indication of the revenues and expenditures that could ‘in principle’ be the responsibility of eitherlevel of government.13 For example, Ebel and Yilmaz (2002) and Stegarescu (2005).
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This horizontal aggregation does not take intoaccount the number of participating SNGs and thedifferences in competencies between them. Bahl andLinn (1992) point out that the data does not indicatewhether subnational revenues and expenditures areconcentrated in one or two jurisdictions or evenlydistributed across all areas. The degree of fiscalautonomy may also differ between subnationaljurisdictions.14 A more correct measure of FDmight consider the horizontal disaggregation offiscal data by jurisdiction. The main difficulty withthis involves finding indicators that are comparableacross countries.
Stegarescu’s indicators of FD
Stegarescu (2005) provides six new indicators of taxand revenue decentralization that attempt to capturedifferent levels of subnational autonomy. Theseindicators have not previously been used in a studyof FD and growth.15 The measures are based on theOECD (1999) surveyTaxing Powers of State and LocalGovernment. The survey classifies subnational taxes indecreasing order of fiscal autonomy according to threecriteria: legislative abilities to determine the tax baseand tax rate; the attribution of tax receipts and taxadministration. Based on the four-digit classificationof taxes by tax base reported in the annual OECDRevenue Statistics, the survey classifies each tax foreach country according to the degree ofdecision-making autonomy as presented in Table 1.
In cases (a)–(c), referred to as ‘own taxes’, theSNGs have total or significant control. In the case ofthe revenue sharing categories (d.1)–(d.2), the SNGshave limited influence. For categories (d.3)–(e), theyhave no control.
Stegarescu (2005) uses these classifications, theOECD Revenue Statistics, GFS data and 23 compre-hensive surveys of national financial laws andconstitutions, to create new indicators of tax andrevenue decentralization for 23 countries.16 Heprovides time-series data on ‘own taxes’ (1965–2001)and ‘own revenues’ (1975–2001), adjusting the classi-fication of autonomy for each SNG tax on an annualbasis according to changes in legal provisions.17
These measures indicate a significant trend towards
decentralization amongst most OECD countries, with
the median degree of FD increasing by around 30% in
terms of own (self-financed) expenditures (from
around 25% to over 31%) and by around 70% in
terms of tax autonomy (from around 12–21%).Stegarescu’s (2005) three measures of tax revenue
(tax-only) decentralization are subnational own tax
revenue (TDEC1), subnational own and shared taxes
(TDEC2) and total subnational tax revenue
(TDEC3), all calculated as the share of GG tax
revenue. Own taxes refer to those taxes for which the
SNG can determine the tax rate or tax base or both.Stegarescu (2005) also provides two measures of
expenditure decentralization. These measures are
based on total subnational expenditure and lending,
minus loan repayments, as a percentage of consoli-
dated GG expenditure, without social security and
EU payments. EDEC1 excludes transfers to other
levels of government, whereas EDEC2 includes
transfers to other levels of government net of received
transfers. Again, none of these measures have been
used in previous studies of FD and growth.Unfortunately, it must still be recognized that these
new measures of fiscal (revenue and expenditure)
decentralization do not provide a remedy to all the
limitations of budget data discussed earlier.
The degree of subnational fiscal autonomy is based
on the provisions fixed in legislation, and actual
implementation is not taken into account. Therefore,
the measures only indicate the potential degree of
Table 1. OECD classification of taxes (in decreasing order
of control over revenue sources)
(a) SNG determines tax rate and tax base(b) SNG determines tax rate only(c) SNG determines tax base only(d) Tax sharing:(d.1) SNG determines revenue-split(d.2) Revenue-split only changed with consent
of SNG(d.3) Revenue-split unilaterally changed by CG
(fixed in legislation)(d.4) Revenue-split unilaterally change by CG
(in annual budgetary process)(e) CG determines tax rate and tax base
Source: Stegarescu (2005) and OECD (1999).
14 This is particularly a concern with regions of special status in France, Italy and Spain, and for Scotland, Wales andNorthern Ireland in the UK.15 Stegarescu (2009) does utilize these FD measures in a study of the effects of political integration on FD in the OECD.16 The survey covers Austria, Belgium, the Czech Republic, Denmark, Finland, Germany, Hungary, Iceland, Japan, Mexico,Netherlands, New Zealand, Norway, Poland, Portugal, Spain, Sweden, Switzerland and the UK. Stegarescu (2005) does notcalculate measures of FD for the Czech Republic, Hungary, Mexico or Poland, but adds measures for Australia, Canada, US,France, Greece, Italy, Ireland and Luxembourg.17 There are gaps in the time-series for most countries before 1980. After 1980s there are missing data points for Greece,Iceland, Italy, Japan, New Zealand and Switzerland.
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fiscal autonomy and may still overestimate actualFD. The criticisms about horizontal aggregation arestill valid. Further, there is some measurement errorin these indicators for the countries that Stegarescu(2005) adds to the OECD survey.18 Nonetheless,these measures provide a solid step towards betteraccounting for the varying degrees of autonomy thatSNGs have over their taxes and revenues.
Hump-shaped indicators of FD
Using these measures of FD, how does one test thehypothesis that a medium degree of decentralization isbest for economic growth? In previous work, Thiessen(2000, 2003), Eller (2004) and Akai et al. (2007) havefound significant support for this hypothesis using‘hump-shaped’ indicators based on the traditionalbudget data measures (the subnational share of GGrevenues and expenditures). In this study, hump-shaped indicators were also created for each ofStegarescu’s (2005) new decentralization measures.
A number of different approaches were tried in theconstruction of hump-shaped indicators. Followingthe divisions outlined in Thiessen (2000, 2003), threedummy variables were created for high, medium andlow levels of FD. Similarly, dummy variables werecreated following Eller (2004) using equal-sized high,medium and low FD groups. Finally, countries weredivided into five equal-sized groups, denoting verylow, low, medium, high and very high decentralization.Since these indicators proved to be time-invariant formany countries, more disaggregated hump-shapedindicators were constructed by ranking each country,for each time period, from the lowest level ofdecentralization to the highes, and assigning numbersthat increase towards the median value (such that thecountry and time period with the highest and lowestlevels of FD were given the number one, the secondhighest and lowest levels of decentralization wereassigned the number two and so on).19 The latter
approach was used to construct the indicators used inboth the cross-section and panel analyses reported inthis article. 20
Other measures of public sector decentralization
Finally, a number of other measures of governmentdecentralization, omitted from previous studies ofFD and growth, are considered. General decentral-ization of the public sector invokes a number ofnotions, each of which involves vertical decentraliza-tion, that is, the division of government into anumber of tiers. Appointment, electoral and person-nel decentralization refer, respectively, to the level atwhich government officials are appointed and dis-missed, whether there are democratic elections ateach level, and the share of administrative personnelemployed at the subnational level. Bahl (1999)suggests that the true extent of FD may be describedby a number of such factors, ranging from electedlocal councils, locally appointed officers, institutionalprovisions, the size and number of subnationalauthorities and their organizational structures.These more general aspects of public sector decen-tralization provide some indication of the ability ofSNGs to respond to local constituencies in their fiscaldecision-making. Use of these broader measures ofdecentralization further emphasizes the point madeby Thornton (2007) that high sub-national revenueand spending shares do not necessarily mean highlocal autonomy – the differentiation between ‘admin-istrative’ and ‘substantive’ fiscal autonomy.21
Therefore, this article includes a number ofindicators of public sector decentralization. Thenumber of subnational jurisdictions in the intermedi-ate and lower tiers of government is considered. Twocountries may have the same subnational share ofexpenditures or revenues but different numbers ofparticipating SNGs. More participating units,ceteris paribus, would imply more FD.22 Then, an
18Note that there is significant measurement error for Australia. Stegarescu (2005) assigns Australian states completeautonomy over all sources of tax revenue, that is, grants from the Commonwealth Grants Commission are consideredautonomous own taxes. The measures do not reflect Australia’s large vertical fiscal imbalance, with the Commonwealthspending only about a third of the tax revenue it raises. Although most of the gap between subnational expenditure andrevenues is filled by grants from the Commonwealth Grants Commission (which may be considered general purpose grantsbased on objective criteria), purpose-specific grants are not considered. In both cases the subnational governments do notcontrol the tax rates or tax bases, and thus including them in TDEC1 and RDEC1 raises questions about measurement errorfor this country.19 The main problem with this measure, and those based on equal shares, is that what constitutes a ‘medium degree’ of FDdepends on the country sample.20 This approach is similar to that derived in the labour economics literature on centralization of wage bargaining by Calmforsand Driffill (1988). The medium degree of FD was postulated to be a subnational share of 30–45%.21 Thornton (2007) provides evidence that previous studies have used measures that have substantially over-estimated theextent of revenue decentralization in practice, and that when more appropriate measures are used the effect of revenuedecentralization on economic growth is not statistically significant.22 This was pointed out by Bahl and Nath (1986, p. 407) but has not been considered in an empirical study of FD and growth.
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indicator was included to account for electoraldecentralization, taking the value of zero if there areno subnational elections, one if either local orintermediate tiers of government are elected, or twoif both are subject to elections.23 Subnational electionsprovide some indication of the ability of consumers toexpress their preferences to different levels of govern-ment and the incentive for governments to respond tothose preferences. The indicator of constitutionalstructure used in the cross-section analysis was takenfrom Lijphart (1999), provided in Armingeon et al.(2002) dataset.24 This is an index of federalism ona five-point scale; (1) unitary and centralized, (2) uni-tary but decentralized, (3) semi-federal, (4) federal butcentralized and (5) federal and decentralized. Infederal countries, SNGs are more likely to havea permanent right to govern their own affairs. Thesethree variables are largely time-invariant and hencethey are not included in the panel analysis.
Resource decentralization is considered usingthe ratio of SNG employees to CG employees,using data provided by Schiavo-Campo et al.(1997). Unfortunately, this data is not readily avail-able over time. These four general aspects of publicsector decentralization provide some indication of theextent to which SNGs are ‘closer to the people’ andare therefore better able to account for localpreferences in fiscal decision-making.
Other variables
The empirical analysis uses 3-year averages based onannual data (see Appendix for data sources). Growthis measured by the change in the natural log of realGDP per capita in constant local currency units andincome levels are measured using Purchasing PowerParity (PPP) comparisons.25 Both are expressed inper capita terms. The Perpetual Inventory Method(PIM) was used to construct a measure of the capitalstock from Gross Fixed Capital Formation (GFCF),following De la Fuente and Domenech (2000).
In this study, the level of human capital is proxiedby average years of schooling. Unfortunately, thisdata is only available in 5-year increments and thuswas interpolated for the panel analysis. Given this,however, calculating the growth rate of humancapital from this series may be misleading. Since a
more consistent annual time series is available for the
secondary school enrolment ratio, the growth rate of
human capital is proxied by the growth rate of the
secondary school enrolment ratio. It is acknowledged
that there is likely to be some measurement error.
These are typical problems encountered in the
empirical growth literature. Authors such as De la
Fuente and Domenech (2000, p. 1) note that poor
measurement and data quality means that educa-
tional variables frequently turn out to be insignificant
or have the ‘wrong’ sign in growth regressions. Levine
and Renelt (1992, p. 945) acknowledge that incorrect
measures of human capital may induce biased results.
However, they still include the secondary school
enrolment ratio in their growth regressions, arguing
that some measure of human capital is required and
other measures produce similar results. Most previ-
ous studies of FD and growth have included the
secondary school enrolment ratio.To control for macroeconomic disturbances, exter-
nal shocks and structural rigidities that could impact
both FD and growth, the GDP deflator is included.
As Eller (2004) points out, when studying the impact
of FD on economic growth, it is also important to
control for the size of the public sector. Therefore,
GG final consumption expenditure, as a percentage
of GDP, is incorporated into the regressions. Other
control variables used in this article include the
vertical fiscal imbalance (transfers to SNGs as a share
of SNG expenditures), the SD of domestic credit
growth (used as a proxy for the uncertainty of
financial variables) and a measure of political free-
dom (countries allocated a number between 1 and 2.5
are considered ‘free’, between 3 and 5.5 ‘partly free’
and above 5 are considered ‘not free’).26
IV. Empirical Results
Cross-sectional analysis
Formal testing of the hypothesis that FD affects eco-
nomic growth begins with the form in Equation 1, i.e.
D lnRGDPCi ¼ D lnAiþ�D ln kiþ�D ln hi ð1Þ
23 France, Germany, Ireland, Italy, New Zealand, Poland and US were given a value of three as they have three electedsubnational tiers.24 Studies of FD and economic growth have not considered a federalism dummy, although Yilmaz (1999) implements separateregressions for federal and unitary countries.25 This follows Nuxoll’s (1994) argument that one should use PPP comparisons to measure the level of GDP and domesticnational accounts data to calculate and compare growth rates.26 The results for the additional conditioning variables are not reported in the tables below for purposes of brevity but areavailable from the authors by request.
Fiscal decentralization and economic growth in the OECD 3027
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where RGDPC is real GDP per capita, A is efficiency,
k is capital per capita and h is the measure of human
capital. Equation 2, determining the growth rate of
efficiency, implies that efficiency depends on various
measures of public sector decentralization, such that
D lnAi ¼ �A0þ �A1 FDi þ �A2 FUi þ �A3 NSGVTi
þ �A4 ELECTi þ �A5 EMPLOYi ð2Þ
where FU is the federalism dummy, NSGVT is the
number of SNG units, ELECT is the number of
elected subnational tiers of government and
EMPLOY is the subnational to CG employee ratio.Substituting Equation 2 into Equation 1 gives
D lnRGDPCi ¼ �A0þ�A1FDiþ �A2FUiþ�A3NSGVTi
þ �A4ELECTiþ�A5EMPLOYi
þ�1D lnkiþ�2D lnhi ð3Þ
Further, control variables are added to Equation 3
to absorb the effect of the size of the government and
macroeconomic shocks. The estimated equation is
outlined in Equation 4. GCGDP is the government
consumption to the GDP ratio and DEF is the GDP
deflator.
D lnRGDPCi
¼ �A0þ�A1FDiþ �A2FUiþ�A3NSGVTi
þ �A4ELECTiþ�A5EMPLOYiþ�1D lnki
þ�2D lnhiþ�3D lnGCGDPiþ�4D lnDEFiþ "i
ð4Þ
Results based on Equation 4 using cross-sectional
data are presented below.27 The number of SNGs, the
subnational employee to central employee ratio and
the GDP deflator are found to be consistently
insignificant and hence are omitted from all of thetables.28 The growth accounting components, FD
and other significant explanatory variables are
reported in Tables 2 and 3 for the linear and hump-
shaped indicators, respectively. No measure of FD,
linear or hump-shaped, is found to be significant.Interestingly, in all cases the federalism indicator is
negatively related to growth. Therefore, in this samplefederal decentralized countries tend to have lower
growth rates than unitary decentralized countries. The
analysis also suggests that countries with more elected
subnational tiers of government generally have lower
economic growth rates. There are many possible
reasons for this result. A higher number of electedtiers of government allows residents greater opportu-
nity to express their preferences. As mentioned earlier,
the level and mix of public goods demanded by local
residents may not necessarily be the level that
maximizes economic growth.29
The growth rate of the capital stock and the growth
rate of government consumption have the expectedsigns. Growth in the secondary school enrolment
ratio, used to proxy for human capital growth, is
consistently insignificant.Therefore, there is no evidence of a direct relation-
ship between FD and economic growth, using cross-
sectional data for this group of 18 OECD countries.
27 To keep the sample constant across the cross-section equations, Japan and Greece were excluded due to missing data for therevenue indicators. Iceland is excluded due to missing data for ELECT.28One empirical issue that was considered before analysing the relationship between FD and economic growth concerned thepotential endogeneity of FD to the growth process. A significant body of empirical literature suggests that the level of incomeis a determinant of FD. Development stimulates demand for variety and quality in the range of public services being providedwhilst increasing the revenue raising capacity of governments, making decentralization affordable. If FD has a high-incomeelasticity, then higher income per capita may allow the constitution of a new level of decentralization. If FD affects economicgrowth, then the new level of decentralization will in turn have an impact on the level of income. This suggests a potentialbi-directional relationship between FD and economic growth. Further, unobservable and omitted variables that tend tosimultaneously affect both decentralization and economic growth may also exist. If this is the case, then simply including FDin a growth regression could lead to simultaneity bias. Bruess and Eller (2004), Eller (2004) and Iimi (2005) acknowledge thispossibility but do not formally test the hypothesis. Hausman tests for simultaneity were conducted for all specifications in theempirical analysis and the null hypothesis that there is no simultaneity associated with the FD variable cannot be rejected.This was the case for both the cross-section and panel regressions.
Additionally, cross-section informal growth regressions necessarily omit the initial level of efficiency. If FD is correlatedwith the initial level of efficiency (which is likely), it will be correlated with the error term in the cross-section regressions. Thegrowth accounting framework, by including variables in their growth rates, has no need for a term in initial efficiency, andinterestingly FD is not found to be correlated with the error term. Nevertheless, the Hausman test results are the same in thepanel framework, where the need for a term in initial efficiency in the informal growth regressions is eliminated by the timedimension. Given that tests do not suggest that simultaneity is a significant problem, the study proceeds with this approach.29Another possible explanation is based in political business cycle theory. Roubini and Sachs (1989) and Alesina and Tabellini(1990) argue that political systems with frequent changes in political power generally have larger government employment,spending, deficits and debt. If more subnational elections lead to a higher turnover of politicians at lower levels, this maydecrease politicians’ concern about the long-term consequences of their actions, leading to overspending, higher deficits andhigher debt. This would tend to lower growth. Further, such electoral decentralization may have a negative impact onmacroeconomic stability, and therefore growth. Nonetheless, such regressions do not allow one to determine why thisnegative relationship exists.
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Table
2.Growth
accounting:OECD
a
Measure
ofFD
EDEC1
EDEC2
TDEC1
TDEC2
TDEC3
RDEC1
RDEC3
EXP
REV
C0.028***
9.299***
0.0317***
7.107***
0.03192***
0.0313***
0.0317***
0.029***
0.031***
(4.495)
(4.970)
(4.641)
(4.955)
(4.882)
(4.7587)
(4.932)
(4.471)
(4.984)
[0.001]
[0.000]
[0.001]
[0.000]
[0.000]
[0.000]
[0.000]
[0.001]
[0.000]
FD
0.0002
3.95E-05
6.48E-05
1.26E-05
4.17E-05
7.43E-05
5.27E-05
0.0002
0.0001
(1.683)
(0.309)
(1.159)
(0.149)
(0.472)
(1.150)
(0.472)
(1.751)
(1.396)
[0.121]
[0.763]
[0.271]
[0.884]
[0.646]
[0.275]
[0.646]
[0.108]
[0.1903]
FU
�0.004**
�0.002*
�0.002**
�0.002**
�0.002**
�0.003**
�0.003*
�0.003***
�0.003***
(�2.646)
(�1.806)
(�3.020)
(�2.366)
(�2.413)
(�2.995)
(�2.102)
(�3.651)
(�3.348)
[0.023]
[0.098]
[0.012]
[0.037]
[0.034]
[0.012]
[0.059]
[0.004]
[0.007]
ELECT
�0.005*
�0.004*
�0.004
�0.004*
�0.004*
�0.004
�0.004*
�0.004*
�0.004*
(�1.935)
(�1.839)
(�1.796)
(�1.918)
(�1.903)
(�1.792)
(�1.889)
(�1.847)
(�1.890)
[0.079]
[0.098]
[0.100]
[0.082]
[0.084]
[0.101]
[0.086]
[0.092]
[0.085]
Dln(k)
0.446***
0.349**
0.357***
0.339***
0.357***
0.358***
0.357***
0.365***
0.362***
(3.648)
(3.081)
(3.821)
(3.127)
(3.354)
(3.999)
(3.544)
(4.108)
(4.519)
[0.004]
[0.012]
[0.003]
[0.009]
[0.006]
[0.002]
[0.005]
[0.002]
[0.001]
Dln(h)
�0.038
�0.028
�0.034
�0.021
�0.027
�0.034
�0.028
�0.047
�0.036
(�0.476)
(�0.391)
(�0.531)
(�0.324)
(�0.417)
(�0.546)
(�0.451)
(�0.682)
(�0.601)
[0.643]
[0.703]
[0.606]
[0.752]
[0.685]
[0.596]
[0.661]
[0.509]
[0.560]
Dln(G
C–GDP)
�0.314**
�0.332**
�0.333**
�0.339**
�0.345**
�0.329**
�0.342**
�0.275*
�0.297**
(�2.403)
(�2.483)
(�2.329)
(�2.526)
(�2.535)
(�2.321)
(�2.519)
(�2.102)
�2.368
[0.035]
[0.030]
[0.039]
[0.028]
[0.028]
[0.041]
[0.029]
[0.059]
[0.037]
Adj.R2
0.510
0.381
0.412
0.378
0.386
0.408
0.386
0.456
0.424
Obs.
18
18
18
18
18
18
18
18
18
F-value
3.995
2.746
2.982
2.719
2.781
2.954
2.781
3.377
3.082
[0.023]
[0.069]
[0.056]
[0.072]
[0.067]
[0.057]
[0.067]
[0.039]
[0.051]
Notes:Ordinary
Least
Squares(O
LS):Whiteheteroscedasticity-consistentSEsandcovariance.t-statisticsare
inparentheses
andp-values
insquare
brackets.
aDlnRGDPC
i¼�A0þ� A
1FD
iþ� A
2FU
iþ� A
4ELECTiþ�1Dlnkiþ�2Dlnhiþ�3DlnGCGDPiþ" i.
*,**and***indicate
significance
atthe10,5and1%
levels,respectively.
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Table
3.Growth
accounting:OECD:hump-shaped
FD
indicators
a
Measure
ofFD
HEDEC1
HEDEC2
HTDEC1
HTDEC2
HTDEC3
HRDEC1
HRDEC3
HEXP
HREV
C0.0268***
0.032***
0.0318***
0.029***
0.029***
0.032***
0.029***
0.028***
0.029***
(3.777)
(4.071)
(4.833)
(4.207)
(4.097)
(4.519)
(4.329)
(4.113)
(3.571)
[0.003]
[0.002]
[0.001]
[0.002]
[0.002]
[0.001]
[0.001]
[0.002]
[0.004]
FD
0.0005
0.0001
0.0001
0.0005
0.0005
0.0001
0.0005
0.0006
0.0005
(1.311)
(0.313)
(0.357)
(1.123)
(1.060)
(0.287)
(1.499)
(1.348)
(0.757)
[0.217]
[0.759]
[0.728]
[0.286]
[0.312]
[0.779]
[0.162]
[0.205]
[0.465]
FU
�0.002**
�0.002**
�0.002**
�0.002**
�0.002**
�0.002**
�0.002***
�0.0018***
�0.002*
(�3.030)
(�2.766)
(�3.063)
(�2.953)
(�3.037)
(�2.704)
(�3.305)
(�3.248)
(�2.198)
[0.011]
[0.018]
[0.011]
[0.013]
[0.011]
[0.021]
[0.007]
[0.008]
[0.052]
ELECT
�0.003
�0.004
�0.004*
�0.004*
�0.004*
�0.004*
�0.004*
�0.004*
�0.004*
(�1.329)
(�1.738)
(�1.915)
(�1.950)
(�1.932)
(�1.882)
(�1.861)
(�1.798)
(�1.847)
[0.211]
[0.110]
[0.082]
[0.077]
[0.079]
[0.087]
[0.089]
[0.099]
[0.092]
Dln(k)
0.321***
0.319***
0.330***
0.3278***
0.304***
0.334***
0.326***
0.338***
0.3486***
(3.688)
(4.218)
(3.869)
(3.934)
(3.980)
(3.868)
(3.964)
(3.877)
(3.688)
[0.004]
[0.001]
[0.003]
[0.002]
[0.002]
[0.003]
[0.002]
[0.003]
[0.004]
Dln(h)
0.017
�0.018
�0.015
0.008
0.016
�0.012
0.006
0.013
0.025
(0.22)
(�0.264)
(�0.227)
(0.104)
(0.186)
(�0.169)
(0.092)
(0.181)
(0.285)
[0.823]
[0.796]
[0.825]
[0.919]
[0.856]
[0.869]
[0.928]
[0.859]
[0.781]
Dln(G
C–GDP)
�0.316*
�0.318**
�0.330**
�0.265**
�0.297**
�0.328**
�0.321**
�0.302**
�0.304**
(�2.197)
(�2.392)
(�2.560)
(�2.566)
(�2.859)
(�2.447)
(�2.523)
(�2.343)
(�2.591)
[0.050]
[0.036]
[0.027]
[0.026]
[0.016]
[0.032]
[0.028]
[0.039]
[0.025]
Adj.R2
0.442
0.382
0.382
0.442
0.454
0.381
0.463
0.478
0.415
Obs.
18
18
18
18
18
18
18
18
18
F-value
3.245
2.752
2.752
3.247
3.353
2.745
3.444
3.593
3.010
[0.045]
[0.069]
[0.069]
[0.043]
[0.039]
[0.069]
[0.036]
[0.032]
[0.054]
Notes:OLS:Whiteheteroscedasticity-C
ONSISTENT
SE
andcovariance.t-statisticsare
inparentheses
andp-values
insquare
brackets.
aDlnRGDPC
i¼�A0þ� A
1FD
iþ� A
2FU
iþ� A
4ELECTiþ�1Dlnkiþ�2Dlnhiþ�3DlnGCGDPiþ" i.
*,**and***indicate
significance
atthe10,5and1%
levels,respectively.
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However, there is some evidence that other aspects ofpublic sector decentralization have a negative impacton economic growth.
Panel data analysis
The panel regressions are based on the OECDcountries for which the four panel indicators of FDare available over the period 1981 to 1998 (Australia,Austria, Belgium, Canada, Switzerland, Germany,Denmark, Spain, Finland, France, the UK, Ireland,Italy, Luxembourg, Norway, Portugal, Sweden andthe US).30 The results are given in Table 4.31 Allregressions include country fixed effects.
Again, few FD measures, linear or hump-shaped,are significantly correlated with growth. The growthrate of human capital is rarely significant and in theone case its sign is counter-intuitive. This is a commonproblem found in the studies of FD and growth, and isprobably due to the measurement error.32 Significantcontrol variables are signed as expected.
V. Conclusions
This article extends the existing empirical work on therelationship between government structure, particu-larly FD, and economic growth by exploring a widerrange of measures of government and FD and bylooking not only at their effect on measures of GDPgrowth, but also on the components of growth,specifically growth in the capital stock, human capitaland Total Factor Productivity (TFP) growth. Theempirical work undertaken suggests that there is littleevidence of a direct relationship between FD andeconomic growth. This supports Davoodi and Zou’s(1998) well-cited study, in which they used thesubnational share of total government spending as aproxy for FD. The analysis further demonstrates thata more diverse range of FD indicators, includingnewly developed measures that capture differentlevels of fiscal autonomy, give similar results.Unlike the studies by Thiessen (2000, 2003),Eller (2004) and Akai et al. (2007), hump-shaped
indicators of FD are not found to be directly related
to the output growth.Nevertheless, other measures of government decen-
tralization, besides FD, do seem to have a directrelationship with the economic growth. In this sample
of OECD countries, federal systems tend to havelower growth rates than do unitary states, indepen-dent of their degree of decentralization. Countries
with more elected tiers of government generally havelower economic growth.
Where should research go from here? Whilst thisarticle incorporates measures of FD disaggregated bydifferent levels of subnational discretion over tax
rates and tax bases, future research may considerdeveloping more disaggregated measures of fiscalautonomy in different areas of expenditure or mea-
sures that are horizontally disaggregated acrosssubnational jurisdictions. Measures of FD that accu-
rately represent changes in FD or capture qualitativerestrictions on subnational autonomy (such as thoseoutlined in the World Bank’s Qualitative
Decentralization Indicators (2001)) may provide fur-ther insights. Better data on human capital, especiallybetter time-series data, is also necessary.
Work on the theoretical front should seek toconnect studies of FD and growth with research
suggesting that income levels are a determinant ofFD. Structural equations specified for both the
determinants of FD and the inclusion of FD ingrowth regressions may allow one to establish morereliable tests for endogeneity or simultaneity in the
relationship. Even if there is no direct relationshipbetween FD and economic growth, further theoret-ical work joining the two areas is warranted. If the
level of FD affects growth in the capital stock, thismay have an indirect impact on long run GDPgrowth, leading to a new level of GDP, which in turn
may have an impact on the level of FD. Similarly, oneof the major problems with the growth literature isthat there is reason to believe that the major
components of the growth equation, capital andhuman capital, are endogenous. With the exceptionof Iimi’s (2005) cross-section analysis, all studies of
FD and growth ignore this issue. Future studiesmay attempt to account for such endogeneity.
30Despite Ireland and Luxembourg’s unusually high growth rates in the late 1990s, their growth over the whole 1981 to 1998period did not seem unusual. Iceland, New Zealand and the Netherlands were excluded as they were missing data onunemployment (Iceland) and fiscal balance (New Zealand and the Netherlands). RDEC1 is missing data for Portugal andItaly. Luxembourg was excluded from the human capital equations due to missing data on average schooling. Politicalfreedom data is missing for Germany prior to 1990.31F-tests indicate significant country fixed effects and Hausman specification tests largely rejected specifications using randomeffects. Other checks for collinearity and outliers were also performed as part of the robustness checks. Results reported werenot found to be affected significantly by these issues. Since Lagrange Multiplier (LM) tests reported serial correlation inthe panel data estimates, the variance–covariance matrix estimates are corrected for heteroscedasticity and serial correlation.32Davoodi and Zou (1998) also have this problem.
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Table
4.Panel:fixed
effects(within)estimatesa
Measure
ofFD
EXP
REV
TDEC1
RDEC1
HEXP
HREV
HTDEC1
HRDEC1
C0.036***
0.033***
0.030***
0.0245***
0.024***
0.044***
0.0295***
0.028***
(0.035)
(4.122)
(8.895)
(5.882)
(12.247)
(11.729)
(7.646)
(11.827)
[0.000]
[0.001]
[0.000]
[0.000]
[0.000]
[0.000]
[0.000]
[0.000]
FD
�0.0004
�0.0004
�0.0003**
5.73E-05
8.79E-06
�0.0002***
�4.71E-05
–2.98E-05
(�0.0001)
(�1.206)
(�2.500)
(0.550)
(0.317)
(�6.091)
(–1.234)
(�1.644)
[0.287]
[0.748]
[0.013]
[0.583]
[0.752]
[0.000]
[0.218]
[0.101]
Dln(k)
0.622***
0.518***
0.511***
0.589***
0.516***
0.637***
0.542***
0.589***
(0.576)
(4.437)
(4.285)
(5.145)
(4.474)
(5.274)
(4.737)
(5.294)
[0.000]
[0.000]
[0.0000]
[0.000]
[0.000]
[0.000]
[0.000]
[0.000]
Dln(h)
�0.015
�0.0067
�0.008
0.005
�0.006
�0.039*
�0.012
�0.002
(�0.009)
(�0.311)
(�0.351)
(0.385)
(�0.292)
(�1.834)
(�0.571)
(�0.124)
[0.678]
[0.552]
[0.726]
[0.701]
[0.771]
[0.068]
[0.569]
[0.901]
Dln(G
C–GDP)
�0.318***
�0.321***
�0.316***
�0.388***
�0.318***
�0.311***
�0.320***
�0.386***
(�0.319)
(�6.397)
(�6.258)
( �7.498)
(�6.316)
(�5.966)
(�6.381)
(�7.189)
[0.000]
[0.000]
[0.000]
[0.000]
[0.000]
[0.000]
[0.000]
[0.000]
Dln(D
EF)
�0.175***
�0.195***
�0.188***
�0.2781**
�0.184***
�0.205***
�0.191***
�0.273***
(�0.193)
(�4.023)
(�4.137)
(�6.299)
(�4.202)
(�5.034)
(�4.449)
(�6.202)
[0.000]
[0.000]
[0.000]
[0.000]
[0.000]
[0.000]
[0.000]
[0.000]
Adj.R2
0.548
0.547
0.548
0.615
0.546
0.599
0.549
0.617
Countries
18
18
18
16
18
18
18
16
Obs.
324
324
324
288
324
324
324
288
11.035
11.012
11.026
13.384
10.966
13.348
11.066
13.477
F-value
[0.000]
[0.000]
[0.000]
[0.000]
[0.000]
[0.000]
[0.000]
[0.000]
Notes:
New
ey–WestheteroscedasticityandautocorrelationconsistentSEandcovariance
(degrees
offreedom
corrected).Relatedt-statisticsare
inparentheses
andp-values
insquare
brackets.
ARamseyRESET
test
wasalsoperform
edto
confirm
thespecifiedmodel
wasunbiasedandconsistent,
andinferencesusingLeast
Squares(LS)
werevalid.
aDlnRGDPC
i,t¼� A
0þ� A
1FD
i,tþ�A2FU
i,tþ�A4ELECTi,tþ�1Dlnki,tþ�2Dlnhi,tþ�3DlnGCGDPi,tþ" i,t.
*,**and***indicate
significance
atthe10,5and1%
levels,respectively.
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One possible line of research, suggested by Temple(1999), is to adapt empirical growth models to allowexplicitly for the possibility of regressors that areendogenous to the growth rate or level of income.
Finally, existing intuitive discussion of the poten-tial relationship FD and growth suggests that theconnection may be indirect, that is, decentralizationmay influence economic growth by improving effi-ciency and increasing the quantity and quality ofinputs to the production process. Therefore, futureresearch could also extend the study of the indirectimpact of FD on economic growth, via the compo-nents of the growth equation, to a panel context.33
To conclude, as long as the current interest in thedecentralization of fiscal responsibilities is main-tained, the effect of FD on the overall economy willcontinue to be debated. With this interest, even morereliable data measures and more work on thetheoretical front, the lens through which one studiesthe interrelationships between FD and real economicvariables can continue to be refocused, until a clearerpicture comes into view.
Acknowledgements
This research originated as part of Ms KathrynFord’s Honours thesis supervised by the author at theUniversity of Queensland in 2005. The author wouldsincerely like to thank Ms Ford for her contributionto the research agenda. The author would further liketo thank Robin Boadway, Harry Campbell and twoanonymous referees for comments and suggestions.Financial support is also provided from AustralianResearch Council Discovery Grant DP0877502. Alas,all remaining errors and omissions are attributable tothe author alone.
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Appendix
Variable Source
Number of subnational jurisdictions World Development Report (1999/2000)Number of elected subnationaltiers of government
World Development Report (1999/2000)
Constitutional structure Armingeon et al. (2002)Subnational and CG employees Schiavo-Campo et al. (1997)GDP and GDP growth World Development Indicators (2005b)GFCF World Bank, World Development Indicators (2005b)Secondary school enrolment ratio World Bank, Database for the Global Development Network;
World Development Indicators (2005a)Average years of schooling Barro and Lee (2000a,b)GDP deflator World Development IndicatorsGG final consumption expenditure World Development IndicatorsVertical fiscal imbalance World Bank, FD Indicators (2001)Domestic credit growth World Development IndicatorsPolitical freedom Freedom House
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