the adverse effect of transnational and domestic terrorism...
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Published Articles & Papers
1-1-2010
The Adverse Effect of Transnational and DomesticTerrorism on Growth in AfricaKhusrav GaibulloevUniversity of Texas at Dallas
Todd SandlerUniversity of Texas at Dallas, [email protected]
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Recommended CitationGaibulloev, Khusrav and Sandler, Todd, "The Adverse Effect of Transnational and Domestic Terrorism on Growth in Africa" (2010).Published Articles & Papers. Paper 152.http://research.create.usc.edu/published_papers/152
The Adverse Effect of Transnational and Domestic Terrorism on Growth in Africa
by
Khusrav Gaibulloev [email protected]
and
Todd Sandler*
School of Economic, Political & Policy Sciences University of Texas at Dallas
800 W. Campbell Road Richardson, TX 75080-3021 USA
[email protected] Phone 1-972-883-6725 Fax 1-972-883-6486
May 2010
Running Title: Terrorism Impact on African Growth Word Count: 8,349 *This study was funded by the US Department of Homeland Security through the Center for Risk and Economic Analysis of Terrorism Events (CREATE) at the University of Southern California, grant number 2007-ST-061-000001. However, any opinions, findings, and conclusions or recommendations are solely those of the authors and do not necessarily reflect the view of the Department of Homeland Security or CREATE. Gaibulloev is a Postdoctoral Researcher and Sandler is the Vibhooti Shukla Professor of Economics and Political Economy.
The Adverse Effect of Transnational and Domestic Terrorism on Growth in Africa
Abstract
With panel estimates, this paper investigates the neoclassical determinants of income per capita
growth for 51 African countries for 1970–2007, while accounting for cross-sectional (spatial)
dependence and conflict (i.e., terrorism, internal conflicts, and external wars). For the entire
sample, fixed-effects panel estimates find that transnational terrorism has a significant, but
modest, marginal impact on income per capita growth. These results hold for two different
terrorism event data sets. However, domestic terrorist events do not affect income per capita
growth. This suggests that an earlier growth study, which did not include domestic terrorist
events for a different sample and time period, provided an accurate picture for Africa. The paper
contains a host of robustness checks that find virtually identical results. Alternative terrorist
variables are also used, with little qualitative change in the findings. The absence of a domestic
terrorism impact is surprising because there were generally many more domestic than
transnational terrorist incidents in Africa. To promote growth, host and donor countries must
direct scarce counterterrorism resources to protect against transnational terrorism in particular.
Keywords: growth in Africa, transnational terrorism, domestic terrorism, conflict, fixed-effects
panel
The Adverse Effect of Transnational and Domestic Terrorism on Growth in Africa
Introduction
In their bid to force governments to concede to their demands, terrorists plan attacks that have
adverse consequences on targeted countries’ economies. Thus, Euskadi ta Askatasuna (ETA)
targeted tourist sites and commerce centers in Spain, while Jemaah Islamiyah bombed a popular
nightclub in Bali and a tourist hotel in Jakarta. Modern-day terrorists have damaged
infrastructure – e.g., train stations, bus stations, airports, and stock exchanges – not only to create
anxiety in a targeted audience, but also to disrupt the economy. Terrorists hope that economic
costs when combined with human losses from economic-damaging attacks will pressure
besieged governments to concede to their political demands. In Africa, terrorist groups have also
sought out economic targets – e.g., the Islamic Group staged the Luxor massacre of tourists on
17 November 1997 at Hatshepsut’s Temple in Egypt. This armed attack murdered 62 and
injured 24 (Mickolus & Simmons, 2002). The car bombing of the Israeli-owned Paradise Hotel
in Mombasa, Kenya on 28 November 2002 by an al-Qaida affiliated Somali group killed 16
(including 3 suicide terrorists) and injured 80 (Mickolus & Simmons, 2006). Two surface-to-air-
missiles on this same day narrowly missed hitting an Israeli-chartered airline taking off from
Mombasa airport.
Terrorism can negatively influence a targeted country’s economic growth through a
number of channels.1 First, terrorist attacks may enhance uncertainty which limits investments
and diverts foreign direct investment to safer venues, as documented by a number of studies
(Abadie & Gardeazabal, 2008; Enders, Sachsida & Sandler, 2006; Enders & Sandler, 1996).
Second, augmented security outlays by a targeted government may crowd out productive public
and private investment (Blomberg, Hess & Orphanides, 2004; Gaibulloev & Sandler, 2008,
2009). Third, a terrorist campaign raises the costs of doing business through higher wages,
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larger insurance premiums, and greater security expenditures, which, in turn, decrease profits,
productivity, and growth. Fourth, terrorist attacks may dampen growth by destroying or
degrading social overhead capital that facilitates commerce and daily routines. Disruption to
transportation, communication, and electricity infrastructure may have short-term dire economic
consequences. Fifth, terrorism impacts specific industries – e.g., airlines and tourism (Drakos,
2004; Drakos & Kutan, 2003; Enders, Sandler & Parise, 1992; Ito & Lee, 2005) – which, in turn,
may limit growth. This may be especially true when terrorists target export-sector assets in an
export-led-growth economy. If such attacks on, say, a country’s mineral wealth make export of
resources unreliable, then importing countries will turn to more reliable sources of supply when
available. Sixth, terrorism may cause donor countries to curtail foreign assistance owing to
stability concerns. On a smaller scale, terrorism adversely affects economic growth for many of
the same reasons – e.g., capital flight, increased uncertainty, destroyed infrastructure, and
increased security spending – that internal conflicts or civil wars impede economic growth.
The primary purpose of this paper is to present panel estimates of the neoclassical
determinants of income per capita growth for 51 African countries for 1970–2007, while
accounting for cross-sectional (spatial) dependence and conflict (i.e., terrorism, internal conflicts,
and external wars). We are particularly interested in the impact of terrorism on growth, because
other studies focused on the impact of internal wars on growth (e.g., Collier & Hoeffler, 2002;
Murdoch & Sandler, 2002a). Unlike Blomberg, Hess & Orphanides (2004), our study
distinguishes between domestic and transnational terrorist incidents and does not rely solely on
transnational attacks. To accomplish this distinction, we use Enders, Sandler & Gaibulloev’s
(2010) division of the Global Terrorism Database (GTD) into the two types of terrorism. Our
study also accounts for cross-sectional dependence. The analysis includes six post-9/11 years,
during which transnational terrorists sought refuge in weak or failing African states. A
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secondary purpose is to investigate the robustness of our estimates by adding a host of
macroeconomic variables (e.g., trade openness and government spending) to the baseline growth
models. These robustness checks are bolstered by alternative specifications of the terrorist
variable.
Why study the impact of terrorism on African growth? Previous studies on terrorism and
growth have either focused on the world (e.g., Blomberg, Hess & Orphanides, 2004; Tavares,
2004) or on Europe or Asia (Gaibulloev & Sandler, 2008, 2009, respectively). When examining
the underlying determinants of growth, Artadi & Sala-i-Martin (2003) showed that these
determinants differ greatly for Africa compared to the rest of the world. In particular, Africa
suffers from low openness, low primary school enrollment, high public spending as a share of
GDP, high population growth, and low investment as a share of GDP. These factors may make
African growth particularly prone to react adversely to violence in the form of terrorism and
wars. Worldwide panel growth estimates present an average picture that will not reflect Africa’s
growth response to terrorism if Africa reacts differently than other regions. Moreover, an
African dummy variable in a worldwide panel study does not quantify how Africa responds to
each of the determinants of growth, including the diverse forms of terrorism and conflicts.
In an earlier study, Blomberg, Hess & Orphanides (2004) showed that African growth,
indeed, reacted differently than other regions and the world at large to transnational terrorism
and other growth determinants. For example, Africa displayed the smallest response to
investment shares. These authors also found that Africa had a much larger growth reaction to
terrorism than the global or other regional samples. This large response for Africa seems out of
character for their 1968–2000 sample period, because Africa had relatively little terrorism
compared with other regions that showed less of a growth response to transnational terrorism
(see Blomberg, Hess & Orphanides, 2004, Tables 4 and 5). Africa has been plagued by terrorism
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and internal conflicts over the last few decades; thus, it is of interest to discern the economic
ramifications of these hostile influences. Another justification for our African focus is that many
transnational terrorist groups (e.g., al-Qaida, Fatah, al-Jihad, Abdullah Azzam Brigades, Armed
Islamic Group, Islamic Union, Army for the Liberation of Rwanda, and Revolutionary United
Front) have active cells or infrastructure in Africa during the sample period. In particular, al-
Qaida has operated out of Sudan, Somalia, Liberia, Kenya, Tanzania, and Comoros (Lyman &
Morrison, 2004). Spectacular terrorist events in Africa include the “Black Hawk Down” incident
against US peacekeeping troops in Mogadishu, Somalia on 3–4 October 1993; the near-
simultaneous bombings of the US embassies in Nairobi, Kenya and Dar es Salaam, Tanzania on
7 August 1998; and the bombings of tourist sites in Sharm el-Sheikh, Egypt on 23 July 2005. In
recent years, failed and weak states, mineral wealth, and emerging Islamic extremism attracted
transnational terrorist groups that sought bases in Africa. Thus, the inclusion of post-9/11 years
is particularly attractive for our study. Africa is an important source of strategic resources
including oil. Given recent discoveries of rich offshore oil reserves in West Africa, Africa’s oil-
supplier status will grow (Lyman & Morrison, 2004). Consequently, terrorist attacks in Africa
have the potential to disrupt crucial supply lines to the industrial world. Our study assesses how
sensitive African economies are to terrorist-induced economic stress. A final ground for
focusing on Africa is that it contains many developing countries that receive foreign aid
(Hoeffler, 2002). Such countries’ economies are particularly sensitive to the harmful influence
of terrorism (Keefer & Loayza, 2008). It is essential to quantify the impact of terrorism on
growth if rich countries and multilateral institutions are to allocate aid properly and to attribute
reduced growth to its proper cause.
The paper is rich in findings. For the African sample, transnational terrorism (measured
in terms of incidents per million people) has a significant, but modest, negative consequence on
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income per capita growth for 1970–2007. By contrast, domestic terrorism does not have a
significant effect on African income per capita growth. By separating the two forms of
terrorism, we establish that counterterrorism resources must be directed to curbing transnational
terrorism to promote African growth. These findings are robust to the inclusion of
macroeconomic and political variables. They are also robust to alternative forms of the terrorism
variables. As in other studies, internal and external conflicts have a negative influence on
African growth.
The remainder of the paper has four sections. The next section contains preliminaries
including definitions and literature review. The empirical methodology is indicated in the third
section, where the empirical specification and data are presented. Estimation and results are
given in the fourth section, followed by concluding remarks in the final section.
Preliminaries
Terrorism is the premeditated use or threat to use violence against noncombatants by subnational
groups or individuals in order to obtain a political or social objective through the intimidation of
a large audience beyond that of the immediate victims. Thus, bombings and armed attacks are
intended by terrorists to raise the anxiety level of citizens (i.e., the audience), so that they
pressure their government to grant the terrorists’ demands. This definition rules out state
terrorism but not state-sponsored terrorism, where a government clandestinely aids a terrorist
group through intelligence, funding, training, safe havens, or other means (Mickolus, 1989). A
key element in any terrorism definition is the motive for political or social change. Without this
motive, violent acts of bombings, kidnappings, or armed attacks are merely criminal activities for
extortion or sociopathic reasons. Our focus on noncombatant victims is to distinguish terrorism
from internal and external conflict, where guerrillas target government military forces.
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A crucial distinction is between domestic and transnational terrorism. Through its
perpetrators, victims, audience, and influence, domestic terrorism solely involves the venue
country. The assassination of local government officials by a domestic terrorist group is a
domestic terrorist event. Since 1992, the Armed Islamic Group (GIA) has conducted a terrorist
campaign against Algerian civilian and government workers. Many, but not all, GIA attacks
have been domestic terrorism. In Cape Town, the People Against Gangsterism and Drugs
(PAGAD) has planted bombs primarily against domestic targets in their 1986–2000 terrorist
campaign. Generally, domestic terrorist attacks far outnumber transnational terrorist attacks (see
Appendix).
Transnational terrorist incidents have ramifications that extend beyond the venue country.
Terrorist events that start in one country and concludes in another (e.g., a skyjacking of a plane
in Egypt that is made to fly to Algeria) are transnational terrorist attacks. If the victims or
perpetrators in a terrorist incident are from countries other than the host or venue country, then
the terrorist attack is transnational. The Luxor massacre in November 1997 involved foreign
nationals from Japan, Switzerland, Germany, the United Kingdom, France, and elsewhere; thus,
this armed attack is a transnational terrorist incident.
As indicated earlier, income per capita growth can also be influenced by internal and
external conflicts. We use data on these conflicts drawn from a dataset, Major Episodes of
Political Violence (MEPV), 1946–2008, maintained by Marshall (2009) at the Center for
Systemic Peace, George Mason University. Intrastate or internal conflict (defined later) occurs
when a country is directly affected by civil violence, civil war, ethnic violence, or ethnic war at
home, orchestrated by an organized group. External conflicts are international violence or war
involving two or more countries.
We next turn to two essential neoclassical determinants of income per capita growth
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(growth). The initial level of income per capita (y) is typically viewed as a positive influence on
growth owing to the notion of convergence, in which the rise in income per capita of a poorer
country outpaces that of a richer country (Barro, 1991; Barro & Sala-i-Martin, 1992).
Diminishing returns is behind convergence, in which countries have an easier time in adding
output where there are less initial inputs and output. Countries are assumed to possess identical
production functions and transition equations, but differ in their starting income per capita. This
latter assumption is more appropriate for a cohort of countries at similar stages of development
where production technologies are similar. This is more likely to hold for our African sample
than for a diverse global sample. A second key neoclassical influence on growth is investment
share (I/GDP). Larger investment shares result in greater capital accumulation, which fosters
growth through capital and embodied technological change.
At a later point, we also introduce some macroeconomic variables that may affect
growth. Often, openness – the ratio of the sum of exports and imports to GDP – is viewed as a
positive determinant on growth (Blomberg, Hess & Orphanides, 2004). Openness may foster
growth as greater exports increase aggregate demand and more imports enhance resources and
technology transfers, particularly in the case of developing countries.
Political violence in various forms are anticipated to limit income per capita growth
(Barro, 1991; Blomberg, Hess & Orphanides, 2004; Murdoch and Sandler, 2002b, 2004). In the
introduction, we indicated numerous grounds why transnational and domestic terrorism are
anticipated to reduce growth. There are grounds for anticipating that transnational terrorism will
be more detrimental than domestic terrorism on growth. When a terrorist event kills a foreigner
or destroys foreign property, there is a greater chance that this will negatively impact foreign
assistance and/or foreign direct investment (a key source of savings), which then reduces growth.
Terrorists deliberately target foreign assets to affect the venue country’s economy adversely.
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Often, foreign targets include those of donor and investor nations. Attacks against foreign
tourists may have particularly large economic impacts (Enders, Sandler & Parise, 1992). Past
studies have sustained these hypothesized decreases. Blomberg, Hess & Orphanides (2004) and
Tavares (2004) found that each year of transnational terrorism limited economic growth for a
global sample by 0.048% and 0.038%, respectively. Gaibulloev & Sandler (2009) found in a
study of Asia that an additional transnational terrorist incident per million persons reduced
economic growth by about 1.4 percentage points annually. In Asia, the mean number of
incidents per million persons was just over 0.05, so that the average anticipated reduction in
growth is slightly greater than the amounts displayed by Blomberg, Hess & Orphanides (2004)
and Tavares (2004) for their global samples. By splitting the Asian sample into developed and
developing countries, Gaibulloev & Sandler (2009) showed that the developed countries did not
display any adverse growth consequences from terrorism. Only the developing Asian economies
were negatively impacted by terrorism. Since Africa contains mostly developing countries, this
finding bodes badly for Africa.
Blomberg, Hess & Orphanides (2004), Murdoch & Sandler (2002b, 2004), and others
have shown that internal and external conflicts resulted in reduced income per capita growth.
These conflicts harmed growth by diverting funds to security spending, raising uncertainty,
increasing diseases, reducing trade, eliminating human capital, and causing capital flight. For
Asia, Gaibulloev & Sandler (2009) established that internal and external conflicts had a much
greater harmful impact on growth then transnational terrorism. Blomberg, Hess & Orphanides
(2004) also uncovered that conflicts decreased growth more than transnational terrorism for their
worldwide sample.
Methodology
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Empirical specifications
The baseline model is a modification of the neoclassical growth model with the addition of
terrorism and conflict variables:
( )0 1 1 2 3 4 51ln /it it it it itit
growth y I GDP terror external internalβ β β β β β− −= + + + + +
i t itα η ε+ + + , (1)
where subscript i = 1, …, N indicates the country and subscript t = 1, …, T indexes the time
period. The convergence term in county i is captured by the natural logarithm of lagged income
per capita, 1ln ity − . Initially, the explanatory variable terror is the number of terrorist attacks per
million persons; alternative measures for terror are introduced later. The internal and external
terms are dummy variables for internal and external conflicts, respectively. The βs are
regression coefficients; iα is the country-specific fixed effect; tη is the time-specific effect; and
itε is the random error term.
Our empirical strategy consists of the following steps. First, we implement the fixed-
effects estimator on the baseline model, Equation (1), for the sample of African countries. We
use two separate measures of terrorism: transnational terrorist attacks per million persons and
domestic terrorist attacks per million persons. Second, we check the robustness of the baseline
results by including a host of possible determinants of growth mentioned in the literature. Third,
we investigate the sensitivity of our results to various specifications of the terrorism variables.
One of the concerns in cross-country panel analysis is that the error terms are likely to be
correlated across countries. This may arise from observable or unobservable common factors
(e.g., shocks), omitted from the model. Cross-sectional dependence (CD) results in biased
standard errors, which influence statistical inference. Inclusion of time dummy variables would
address the issue only if the spatial correlations are equal for every pair of countries, which is a
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strong assumption. We implement Driscoll & Kraay’s (1998) nonparametric estimator of the
standard error, consistent with the general form of spatial dependence, autocorrelation, and
heteroskedasticity. Pesaran’s (2004) CD test is applied to search for cross-sectional
dependence.2 We also check the results using Huber/White robust standard errors, and robust
standard errors for multi-way (two-way in our case) clustering proposed by Cameron, Gelbach &
Miller (2009).
Data
We construct an unbalanced panel dataset of 51 African countries for 1970–2007. Table IA in
the Appendix summarizes raw data and sources. Our terrorism data are drawn from two sources.
Data on transnational terrorist incidents for 1970–2007 are taken from International Terrorism:
Attributes of Terrorist Events (ITERATE) (Mickolus et al., 2008). ITERATE relies on print and
electronic media for observations of terrorist events, including the event’s date and country
location. For each sample African country, we know the annual number of transnational terrorist
incidents.3 This yearly total is divided by the country’s population to give our continuous
measure of transnational terrorist incidents per million persons ( )_ _ ittrans terror iter . We favor
a continuous measure of terrorism that is normalized by the population, because more populous
countries appear better able to absorb a terrorist attack without displaying economic
ramifications (Blomberg, Hess & Orphanides, 2004; Gaibulloev & Sandler, 2009). We examine
alternative measures for robustness check.
Data for both domestic and transnational terrorist attacks are available in the Global
Terrorism Dataset (GTD), compiled by the National Consortium for the Study of Terrorism and
Responses to Terrorism (START) (2009) at the University of Maryland. However, domestic and
transnational terrorist events are not distinguished within GTD. Hence, our second source for
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terrorism data is Enders, Sandler & Gaibulloev (2010), who engineered a procedure to
dichotomize GTD data into transnational and domestic events.
Figure 1 displays the annual number of transnational terrorist events in Africa: the solid
time series depicts this number for ITERATE, while the broken time series depicts this number
for GTD. The data for 1993 are missing from GTD; thus, we interpolate 1993 values as the
average of the 1992 and 1994 values.4 For 1970–1979 and 1981–1988, the number of ITERATE
events consistently exceeds the number of transnational events in GTD. The average numbers of
incidents in ITERATE are about 15 and 41 for the two periods, while the average numbers of
transnational incidents in GTD are about 5.4 and 16 for the two periods, respectively. Similarly,
for 1990 and 1999–2000, the number of terrorist incidents in ITERATE are much greater than
the number of transnational terrorist incidents in GTD. After 2006, GTD reports a sharp increase
in the number of transnational terrorist incidents. For other years, the two series generally track
each other well.
[Figure 1 near here]
More detailed information on terrorist events by country and by African regions is
reported in Table IIA in the Appendix. For example, based on the total number of transnational
terrorist incidents over the sample period, Algeria, Angola, Ethiopia, and Somalia are among the
top five countries, based on ITERATE and GTD data. In terms of domestic terrorist events,
Algeria, Angola, Burundi, Egypt, and South Africa are the most terrorism-plagued countries in
Africa (Table IIA).
Given that ITERATE uses a consistent coding approach, Enders, Sandler & Gaibulloev
(2010) devised a calibration procedure for the GTD data. In short, these authors first calibrated
transnational terrorist events in GTD using these consistently coded events in ITERATE. The
calibration was based on a ratio of means. Next, they calibrated GTD’s domestic terrorist
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incidents by the same ratios of means for the requisite periods. For the world sample, they
inflated the number of pre-1977:2 GTD incidents (domestic and transnational) by a factor of 2.06
and deflated the number of GTD incidents for 1991:2–1997:4 by a scaling factor of 0.52. (The
numbers after the colon denote quarters.) However, we cannot use these scaling factors and
periods for Africa, because Figure 1 indicates that the terrorism data for the Africa sample
behave differently than the data for the world sample. Following the approach suggested by
Enders, Sandler & Gaibulloev (2010), we calibrate GTD data using scale factors specific to
Africa. In particular, we scale up the number of GTD incidents prior to 1980 by a factor of 2.80
(= 15/5.4), the ratio of the mean number of ITERATE incidents to the mean number of GTD
transnational incidents for this period. Similarly, we inflate the number of GTD incidents for
1981–1988 by a scale factor of 2.52; for 1990 by a scale factor of 1.67; and for 1999–2000 by a
scale factor of 2.63. We use these scaling factors to modify GTD domestic incidents as well.
[Figure 2 near here]
Figure 2 shows that the calibrated GTD transnational incidents (broken line) track
ITERATE incidents (solid line) reasonably well. The dotted series is a plot of GTD data,
adjusted by the scaling factors suggested by Enders, Sandler & Gaibulloev (2010). As expected,
this modified data does not track ITERATE well. Once again, we divide the annual number of
transnational and domestic terrorist events in each country by its population to come up with the
number of transnational incidents per million persons ( )_ _ ittrans terror gtd and the number of
domestic incidents per million persons ( )_ _ itdom terror gtd .
Information on conflicts is obtained from Major Episodes of Political Violence (MEPV)
database (Marshall, 2009). MEPV defines major episodes as “…the systematic and sustained
use of lethal violence by organized groups that result in at least 500 directly-related deaths over
13
the course of the episode.” Episodes fulfilling the casualty threshold are classified into seven
armed conflict types: international violence, international war, international independence war,
civil violence, civil war, ethnic violence, and ethnic war. Our internal conflict variable
( )itinternal is a dummy, which is 1 if a country is directly affected by civil violence, civil war,
ethnic violence, or ethnic war during a given year, and is 0 otherwise. The external conflict
dummy ( )itexternal is 1 if a sample country is directly engaged in either an international
violence or international war, and is 0 otherwise. There are many more countries with internal
conflicts (more than ten countries) each year than those with external conflicts. Except for a
couple of periods, such as the second half of the 1970s and the second half of the 1990s, there
are few to no external conflicts recorded. The polity variable ( itpolity ) comes from Polity IV
dataset (Marshall & Jaggers, 2009). The variable reflects three key inter-related elements:
opportunities for political participation, constraints on executive power, and government support
and protection of civil liberties. This index ranges between –10 (strongly autocratic) and +10
(strongly democratic).
The main source of information for gross domestic product (GDP) is World Bank
(2009).5 We obtain GDP per capita at purchasing power parity (PPP) in current international
dollars for 2000 and extend the series forwards and backwards using the real growth rate of GDP
per capita in local currency units (LCU). The resulted series are GDP per capita based on PPP at
constant 2000 prices. Our variable 1ln ity − is the log of PPP-based GDP per capita at constant
2000 prices, lagged by one year. The economic growth ( )itgrowth variable is the growth rate of
PPP-based GDP per capita in constant 2000 prices.
Data on population is drawn from World Bank (2009). For each country-year, we
compute the growth of population, itpopulation growth , as our variable. We obtain data on gross
14
capital formation as a percentage of GDP, government consumption as a percentage of GDP, and
export and import as a percentage of GDP from United Nations Statistics Division (UNSD)
(2008). Using these data, we compute the investment as a share of GDP lagged by one year, the
government consumption as a share of GDP lagged by one year, and the trade (export plus
import) as a share of GDP lagged by one year. We denote these variables as 1/ itI GDP − ,
1/ itG GDP − , and 1/ itTRADE GDP − , respectively.
Estimation and results
The fixed-effects estimates of our baseline model are presented in Table I. Model 1 consists of
lagged per capita income, investment share in GDP, number of ITERATE transnational terrorist
incidents per million persons, and internal and external conflict dummy variables. Models 2 and
3 repeat the analysis of Model 1 by replacing the ITERATE terrorism variable with the number
of GTD transnational terrorist incidents per million persons and the number of GTD domestic
terrorist incidents per million persons, respectively. Finally, Models 4 includes both GTD
terrorism variables (i.e., transnational and domestic).
[Table I near here]
The Pesaran’s CD test for cross-sectional dependence is marginally significant (except
for Model 3) when the time dummy variables are included; without these time dummies, the CD
test is highly significant. This suggests that the time dummy variables eased the cross-sectional
(spatial) correlation issue, but concerns remain. Therefore, we estimate our models using
Driscoll and Kraay’s standard errors, robust to general forms of heteroskedasticity,
autocorrelation, and cross-sectional dependence. We note that the results generally hold if we
replace Driscoll and Kraay’s standard errors with Huber/White robust standard errors.
15
Lagged GDP per capita has a negative impact, consistent with convergence, while
investment share has a positive influence on the growth of per capita income, consistent with
growth theory. Both coefficients are robust to alternative specifications. With regard to political
violence variables, all coefficients are negative and statistically significant except for the
domestic terrorism variable, which is not statistically significant. The estimated impact of
transnational terrorism is about –0.01 using ITERATE and –0.02 using GTD, which means that,
on average, an extra transnational terrorist incident per million persons reduces economic growth
by about 1 to 2% in a given year.6 At first, these growth effects seem large if one considers the
small and, sometimes, negative annual growth rate of African economies during the study period.
The impacts are, however, in terms of per million persons: a country with a population of 50
million would have to experience 50 transnational terrorist incidents in a given year to have its
income per capita growth rate decline by 1%. For our sample countries, the average annual
number of transnational terrorist events per million persons is about 0.1. Thus, on average, the
negative marginal impact of transnational terrorism in our African sample is about 0.1
percentage point of income per capita growth, which is small and consistent with, but somewhat
larger than, that of the literature (Blomberg, Hess & Orphanides, 2004; Tavares, 2004). The
coefficients of internal and external conflicts are about –0.02, indicating that a conflict reduces
income per capita growth by approximately 2% in a year.
[Table II near here]
There are a number of possible or additional determinants of economic growth, discussed
in literature. For example, Artadi & Sala-i-Martin (2003) showed that, among the other factors,
the degree of economic openness, government spending, and political and economic institutions
are important determinants of economic growth in Africa. We investigate the robustness of the
above terrorism results by including a host of additional macroeconomic and political variables
16
to the growth model in Table II. The CD test statistics suggest the presence of cross-sectional
dependence, which we take into account by estimating Driscoll and Kraay’s standard errors. As
seen in Table II, the terrorism variables are robust to the inclusion of additional variables in
terms of their statistical significance, sign, and magnitude; the impact of transnational terrorism
is negative and statistically significant, whereas the negative effect of domestic terrorism is not
significant. Over the sample period, there are 1,005 transnational terrorist incidents and 4,610
domestic incidents recorded in Africa based on GTD data. Transnational terrorist attacks killed
around 2,956 people or around 3 persons per incident and wounded 6,222 people or about 6
persons per incident, while domestic attacks killed 18,742 people or about 4 persons per incident
and wounded 15,375 people or about 3.3 persons per incident. In terms of human life, domestic
terrorism is as deadly or damaging as transnational terrorism. However, transnational and
domestic terrorist incidents differ, among other things, because the former targets foreign
citizens, foreign businesses (personnel and assets), and international institutions. Consequently,
transnational terrorist attacks can adversely influence foreign direct investment, aid flows, and
trade, which may partly explain the different impact on growth between two types of incidents.
Internal and external conflicts remain negative and statistically significant in all models.
With regard to new variables, consistent with Artadi & Sala-i-Martin (2003), the share of
government expenditure in GDP and openness (measured by the share of trade in GDP) are
associated with negative and positive growth of GDP per capita, respectively. The negative
influence of the government expenditure share is consistent with crowding out of more
productive uses of these resources, while the positive influence of openness is consistent with
trade-induced technological transfers and the stimulation of expenditures. The impacts of
population growth and degree of democracy (polity) are not statistically significant.
The results in Table II generally hold if we replace Driscoll and Kraay’s standard errors
17
with Huber/White robust standard errors. Cameron, Gelbach & Miller (2009) proposed a general
estimator of standard errors that allows for multi-way clustering. Using their estimator, we
cluster at the country and year level to allow for both cross-sectional and time series dependence.
Based on the cluster-robust standard errors, most of the results of Table II hold, except that the
ITERATE transnational terrorism and external conflict variables are not significant.7
[Table III near here]
Next, we implement a number of additional robustness checks – see Table III. To save
space, we only report estimates of the terrorism variables. As discussed in the previous section,
our findings are based on calibrated GTD data. First, we check our results by re-estimating the
models of Table II using the original (not adjusted) GTD data. Country-level statistics of
terrorist events for 1993 are obtained from Appendix I of the GTD Codebook. Our results, save
for a change in magnitude of the GTD transnational terrorism coefficient, are remarkably robust.
Second, there is no satisfactory answer as how to measure terrorism, given available data. We
re-estimate our models using two alternative measures of terrorism from the literature: number of
terrorist incidents (not normalized by population) and a dummy variable for terrorism (i.e.,
whether or not there was terrorism in a given year for a country). For both cases, our results
generally hold in terms of sign and statistical significance. The only notable difference is that
domestic terrorism is significant in Model 3 when we apply a dummy. Finally, we use one-year
lagged value of the number of terrorist incidents per million persons. The estimate of ITERATE
transnational terrorist incidents is not significant, while the estimate of GTD transnational
terrorist incidents remains negative and statistically significant.
Concluding remarks
Both terrorism and conflict (internal and external) adversely affect income per capita growth in
18
Africa. Past studies have shown that Africa responds differently than the rest of the world to
growth factors (Artadi & Sala-i-Martin, 2003; Blomberg, Hess & Orphanides, 2004); hence,
there are grounds for our analysis to quantify these differences for an up-to-date sample that
accounts for terrorism and other growth factors in Africa. By distinguishing between the two
types of terrorism, we show that only transnational terrorism has a significant negative influence
on growth in Africa for our panel estimates. Domestic terrorism does not have a significant
adverse impact on African growth. Our results are robust not only to the inclusion of other
economic and political variables (e.g., government spending share, trade openness, democracy
index, and population growth), but also to alternative specifications of the terrorism variable.
Because Africa contains so many developing countries and weak democracies, insights
from the literature suggest that African growth may be especially hard hit by terrorism (see, e.g.,
Gaibulloev & Sandler, 2009; Keefer & Loayza, 2008). This worry is compounded by the
increasing presence of fundamentalist terrorists in Africa (Lyman & Morrison, 2004) and the
transference of terrorist attacks to Africa over the last decade or so (Enders & Sandler, 2006).
Though the effect of terrorism on growth is significant, it is surprisingly modest when one
considers the average population levels. This is an important consideration because our primary
terrorism variable is the number of incidents per million persons. Most sample countries have
relatively few terrorist incidents per year and large populations. The average annual number of
transnational terrorist incidents per million persons is approximately just 0.1 for our sample.
Hence, an average sample country sustains a very small annual reduction in its income per capita
growth of 0.1%, because it must experience an additional incident per million persons for growth
to fall by 1% or 2% in the case of transnational terrorism. This is encouraging news. The
absence of a significant domestic terrorism impact on African growth is also good news insofar
as Africa is plagued by much more domestic than transnational terrorism. When trying to limit
19
negative growth effects of terrorism, this study shows that counterterrorism resources should be
directed to transnational, rather than domestic, terrorism.
The transference of transnational terrorist attacks to Africa in recent years is largely due
to enhanced border security in the United States, Europe, and other wealthy countries. Often,
US, Israel, and European assets are targeted in Africa-based transnational terrorist attacks
(Enders & Sandler, 2006). Thus, these rich countries have an obligation to help African
countries bolster their counterterrorism responses if asked. Since the same terrorist groups – e.g.,
al-Qaida – may target more than one African country, there is a need for a coordinated African
response in such instances.
When judging the effectiveness of their aid for development, donor countries must take
into account that terrorism will curb recipient countries’ growth. This reduced performance
should not always be attributed to other nefarious causes such as corruption or bad policies. The
results of this paper allow for a calculation of these generally modest growth losses.
20
Footnotes
1. On the effects of terrorism on economies, see Keefer & Loayza (2008) and Sandler &
Enders (2008).
2. The Driscoll and Kraay’s standard errors are computed using the Stata program of
Hoechle (2007), which can handle unbalanced panels. Pesaran’s CD test is performed using the
Stata program of De Hoyos & Sarafidis (2008).
3. In ITERATE, both starting location and ending location of an incident are reported,
which causes a problem if the starting and ending locations differ (e.g., letter bombing or
skyjacking). We had 137 such events in our sample. After reading the history of these events,
we excluded 2 events, and assigned 93 events to location start and 42 events to location end.
4. Country-level estimates of terrorist events for 1993 are available in Appendix I of the
GTD Codebook, but these estimates likely underestimate the number of incidents. For example,
the number of GTD transnational incidents in Africa declines sharply from 105 in 1992 to 34 in
1993, and then increases rapidly to 150 incidents in 1994. By contrast, the number of ITERATE
transnational incidents in Africa increases steadily; 47 in 1992; 98 in 1993; and 129 in 1994. We
check our results using GTD values from Appendix 1 (see next section).
5. World Bank (2009) does not have PPP-based GDP data for Zimbabwe, nor does it
have any GDP data for Somalia. Information on GDP at constant LCU is also missing for some
country-years. We use GDP at constant LCU from the United Nations Statistics Division
(UNSD) (2008) to fill in the missing observations. For Zimbabwe, PPP-based GDP per capita at
current prices for 2000 is obtained from IMF (2009). For Somalia, the real GDP per capita at
PPP is obtained from Penn World Table Version 6.2 (Heston, Summers & Aten, 2006) for 1970–
2004 and extrapolated to 2005–2007 using per capita GDP growth at LCU from UNSD (2008).
The correlation between the growth rates of real GDP per capita at LCU from World Bank and
21
UNSD is about 0.9. The correlation between GDP per capita (PPP) from World Bank and IMF
is above 0.9, while this correlation is about 0.64 for Penn World Table and World Bank data.
6. Gaibulloev & Sandler (2008) found that the effect of transnational terrorist events on
growth is larger than that of aggregate terrorist events for Western Europe. In addition, they
showed that the influence of transnational terrorism on income per capita growth is greater than
that of domestic terrorism.
7. These results are available from the authors upon request.
22
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0
20
40
60
80
100
120
140
160
1970 1974 1978 1982 1986 1990 1994 1998 2002 2006
Figure 1. Annual Number of Transnational Terrorist Incidents, 1970-2007
Num
ber
of in
cide
nts
ITERATE
GTD_trans
0
20
40
60
80
100
120
140
160
1970 1974 1978 1982 1986 1990 1994 1998 2002 2006
Figure 2. Annual Number of Transnational Terrorist Incidents Using Adjusted GTD Data
Num
ber
of in
cide
nts
ITERATE
GTD_trans1
GTD_trans2
Table I. Fixed-effects estimation of growth model with cross-sectional dependence, 1970–2007
Model 1 Model 2 Model 3 Model 4 ln yit–1 –0.042*** –0.040*** –0.041*** –0.040*** (0.013) (0.013) (0.013) (0.013) I/GDPit–1 0.161*** 0.161*** 0.158*** 0.161*** (0.032) (0.031) (0.031) (0.031) trans_terror_iterit –0.013** (0.006) trans_terror_gtdit –0.020*** –0.020*** (0.005) (0.005) dom_terror_gtdit –0.002 –0.0004 (0.002) (0.0013) internalit –0.016*** –0.013*** –0.016*** –0.013*** (0.003) (0.003) (0.003) (0.003) externalit –0.018** –0.019** –0.018** –0.019** (0.008) (0.008) (0.008) (0.008) Sample size 1751 1751 1751 1751 R-squared 0.14 0.15 0.13 0.15 CD test –1.72 –1.75 –1.43 –1.76 p-value 0. 085 0.080 0.154 0.078 Notes: CD test is Pesaran’s (2004) test of cross-sectional independence and p-value is the probability value of the null. Constant and time dummies are suppressed. Driscoll and Kraay’s standard errors are in parentheses. These standard errors are robust to general forms of heteroskedasticity, autocorrelation, and cross-sectional (spatial) dependence. R-squared (within) is computed after removing country effects. Significance levels: *** is .01, ** is .05, and * is .10.
Table II. Robustness of estimates to inclusion of additional variables, 1970–2007
Model 1 Model 2 Model 3 Model 4 ln yit–1 –0.051*** –0.049*** –0.051*** –0.049*** (0.012) (0.012) (0.012) (0.012) I/GDPit–1 0.082** 0.084** 0.079** 0.084** (0.035) (0.033) (0.036) (0.033) G/GDPit–1 –0.105*** –0.101*** –0.103*** –0.101*** (0.036) (0.035) (0.036) (0.036) TRADE/GDPit–1 0.070*** 0.068*** 0.071*** 0.068*** (0.014) (0.013) (0.015) (0.013) trans_terror_iterit –0.013** (0.005) trans_terror_gtdit –0.019*** –0.019*** (0.004) (0.004) dom_terror_gtdit –0.002 –0.001 (0.002) (0.001) internalit –0.011*** –0.009*** –0.012*** –0.009*** (0.003) (0.003) (0.003) (0.003) externalit –0.015** –0.017** –0.016** –0.017** (0.007) (0.007) (0.007) (0.007) polityit –0.0002 –0.0002 –0.0002 –0.0002 (0.0003) (0.0004) (0.0003) (0.0003) population growthit 0.478 0.466 0.473 0.465 (0.357) (0.343) (0.372) (0.342) Sample size 1744 1744 1744 1744 R-squared 0.18 0.18 0.17 0.18 CD test –2.33 –2.31 –2.11 –2.32 p-value 0.020 0.021 0.035 0.021 Notes: CD test is Pesaran’s (2004) test of cross-sectional independence and p-value is the probability value of the null. Constant and time dummies are suppressed. Driscoll and Kraay’s standard errors are in parentheses. These standard errors are robust to general forms of heteroskedasticity, autocorrelation, and cross-sectional (spatial) dependence. R-squared (within) is computed after removing country effects. Significance levels: *** is .01, ** is .05, and * is .10.
Table III. Re-estimation of Table II by using unadjusted GTD data and alternative specifications of terrorism variables
Model 1 Model 2 Model 3 Model 4 Using unadjusted GTD data
trans_terror_iterit –0.013** (0.005) trans_terror_gtdit –0.033*** –0.032*** (0.005) (0.006) dom_terror_gtdit –0.004 –0.001 (0.003) (0.002)
Using number of terrorist incidents trans_terror_iterit –0.002** (0.001) trans_terror_gtdit –0.001*** –0.002*** (0.0005) (0.001) dom_terror_gtdit 0.00003 0.00008 (0.00003) (0.00005)
Using dummy variable for terrorism trans_terror_iterit –0.011** (0.005) trans_terror_gtdit –0.012** –0.011** (0.004) (0.005) dom_terror_gtdit –0.008** –0.005 (0.004) (0.004)
Using lagged value of the number of terrorist incidents per million population trans_terror_iterit-1 –0.002 (0.003) trans_terror_gtdit-1 –0.009** –0.009*** (0.004) (0.003) dom_terror_gtdit-1 –0.001 –0.001 (0.001) (0.001) Notes: See Models in Table II for specification. Driscoll and Kraay’s standard errors are in parentheses. These standard errors are robust to general forms of heteroskedasticity, autocorrelation, and cross-sectional (spatial) dependence. Significance levels: *** is .01, ** is .05, and * is .10.
APPENDIX Table IA. Raw data and sources Data Sources GDP per capita (PPP at current international dollars, LCU at constant prices)
World Bank (2009), IMF(2009), Heston, Summers & Aten (2006), UNSD (2008)
Investment share in GDP UNSD (2008) Government spending share in GDP UNSD (2008) Import share in GDP UNSD (2008) Export share in GDP UNSD (2008) Transnational terrorist incidents (ITERATE) Mickolus et al. (2008) Transnational terrorist incidents and domestic terrorist incidents (GTD)
Enders, Sandler & Gaibulloev (2010), START (2009)
Internal conflicts (MEPV) Marshall (2009) External conflicts (MEPV) Marshall (2009) Polity2 (Polity IV dataset) Marshall and Jaggers (2009) Population World Bank (2009)
Table IIA. Number of terrorist incidents by country and ranking of countries in terms of the number of terrorist incidents for 1970–2007
Country ITERATE GTD transnational GTD domestic Number Rank Number Rank Number Rank
East region 484 1 450 1 929 3 Burundi 21 18 28 12 184 5 Comoros 0 45 0 42 5 38 Djibouti 7 27 4 32 10 30 Eritrea 4 34 2 37 0 49 Ethiopia 82 4 66 4 47 16 Kenya 21 18 24 13 80 9 Madagascar 1 42 6 29 15 24 Malawi 0 45 0 42 5 38 Mauritius 0 45 0 42 1 47 Mozambique 70 7 40 10 141 7 Rwanda 7 27 33 11 80 9 Seychelles 1 42 0 42 0 49 Somalia 160 2 159 1 117 8 Tanzania 6 31 7 26 1 47 Uganda 34 11 53 6 166 6 Zambia 24 16 9 23 32 19 Zimbabwe 46 9 22 15 48 15
Middle region 133 4 141 4 401 4 Angola 82 4 84 3 310 4 Cameroon 3 37 4 32 12 27 Central African Rep. 3 37 5 30 5 38 Chad 11 22 13 19 15 24 Congo, Dem. Rep. 12 21 24 13 44 17 Congo, Rep. 15 20 12 22 11 28 Equatorial Guinea 2 40 0 42 2 46 Gabon 5 32 1 39 4 42
North region 389 2 262 2 1836 1 Algeria 93 3 142 2 1260 2 Egypt, Arab Rep. 166 1 50 7 500 3 Morocco 31 12 18 18 10 30 Sudan 76 6 45 9 60 12 Tunisia 23 17 8 25 7 35
South region 82 5 63 5 1489 2 Botswana 7 27 0 42 6 37 Lesotho 8 24 7 26 17 22 Namibia 10 23 4 32 14 26 South Africa 31 12 50 7 1445 1 Swaziland 26 14 2 37 9 33
West region 176 3 165 3 333 5 Benin 0 45 3 36 7 35 Burkina Faso 2 40 0 42 3 44 Cape Verde 0 45 0 42 0 49
Cote d'Ivoire 8 24 22 15 11 28 Gambia, The 0 45 0 42 4 42 Ghana 4 34 1 40 17 22 Guinea 3 37 1 40 9 33 Guinea-Bissau 0 45 0 42 5 38 Liberia 25 15 13 19 10 30 Mali 1 42 5 30 24 20 Mauritania 5 32 4 32 3 44 Niger 7 27 13 19 22 21 Nigeria 69 8 66 4 72 11 Senegal 4 34 7 26 57 13 Sierra Leone 40 10 22 15 41 18 Togo 8 24 9 23 51 14 Note: GTD does not have data for Cape Verde.