w___ d_ ps 73 POLICY RESEARCH WORKING PAPER 2533 How Much War As important as knowing how wars start and end is knowing Will We See? how much war we are likely to observe in any given Estimating the Incidence of Civil War period. In strategies for preventing civil war, political in 161 Countries liberalization should be a higher priority than economic Ibrahim Elbadawi development, but the best Nicholas Sambanis possible results would combine political reform, economic diversification, and poverty reduction. FIllE COPY The World Bank Development Research Group Public Economics H January 2001 i I POLICY RESEARCH WORKING PAPER 2533 Summary findings Quantitative studies of civil war have focused either on whatever the degree of ethnolinguistic fractio lalization war's onset or its termination, producing important in a society. insights into these end points of the process. Elbadawi * This effect is amplified in polarized socie :ies. The and Sambanis complement these studies by studying how probability of civil war is lower in very homogeneous much war we are likely to observe in any given period. societies and (less so) in more diverse societie . To answer this question, they combine recent advances * In polarized societies the risk of civil war can be in the theory of civil war initiation and duration and reduced by political rather than economic libcralization. develop the concept of war incidence, denoting the At high levels of political freedom, ethnic divc rsity-even probability of observing an event of civil war in any polarization-has a minimal impact on the risk of civil given period. They test theories of war initiation and war. duration against this new concept using a five-year panel * Economic diversification that would reduice a data set for 161 countries. Their analysis of the incidence country's reliance on primary exports would also reduce of war corroborates most of the results of earlier studies, the risk of civil wars, especially in polarized societies. enriching those results by highlighting the significance of * In strategies for preventing civil war, pol tical sociopolitical variables as determinants of the risk of civil liberalization should be a higher priority than economic war. Their findings: development, but the best possible results wo.ild * Steps toward advancing political liberalization or combine political reform, economic diversification, and economic development reduce the risk of civil war, poverty reduction. This paper-a product of Public Economics, Development Research Group-is part of a larger effort in the gr oup to study the economics of violence. The study was funded by the Bank's Research Support Budget under the research project "The Economics of Political and Criminal Violence" (RPO 682-99). Copies of this paper are available free from the 'World Bank, 1818 H Street NW, Washington, DC 20433. Please contact Hedy Sladovich, room MC2-609, telephone 202.:-473-7698, fax 202-522-1154, email address hsladovich@worldbank.org. Policy Research Working Papers are also posted on the Web at http://econ.worldbank.org/. The authors may be contacted at ielbadawi@%worldbank.org or nsambanis Caiworldbank.org. January 2001. (32 pages) The Policy Research Working Paper Series disseminates the findings of work in progress to encourage the exchange of idea; about development issues. An objective of the series is to get the findings out quickly, even if the presentations are less than fully polished. The papers carry the names of the authors and should he cited accordingly. The findings, interpretations, and conclusions expressed in this paper are entirely those of the authors. They do not necessarily represent the view of the World Bank, its Executive Directors, or the countries they represent. Produced by the Policy Research Dissemination Center How Much War Will We See? Estimating the Incidence of Civil War in 161 Countries Ibrahim Elbadawi' Nicholas Sambanis ' * World Bank, DECRG, 1818 H Street, NW., Washington DC 20433. The authors can be contacted at: ielbadawi@worldbank.org, nsambanispworldbank.org. 1. Introduction Formal and quantitative analyses of civil wars have recently identified a set of important socio-economic determinants of the onset (initiation) and duration of civil war. To date, the most extensive such studies are Collier and Hoeffler (2000), Sambanis (2001), Hegre et al. (1999); and Fearon and Laitin (2000; 1999); who identify the determinants of the onset of civil war; Collier, Hoeffler and Soderbom (1999), who analyze the socio-economic determinants of war duration; and Mason and Fett (1996), Licklider (1995), and Doyle and Sambanis (2000) who focus on the political determinants of civil war termination and post-conflict peacebuilding. These studies use a variety of models and data-sets and focus on different periods, generating a wealth of insights into the correlates of civil war. In this paper, we aim to contribute to the study of the causes of civil war by developing the idea of incidence of civil war and identifying its determinants. We define the probability of incidence of civil war at any given time (t) as a probability of two disjoint events. The first event is that war happens at time (t), having been initiated for the first time (i.e. there was no war at time (t-1)). The second event is that war is observed at time (t), having been initiated at an earlier period. Thus, the probability of incidence of civil war is equal to the probability of war onset or initiation plus the probability that a war will last more than one period. The concept of war incidence therefore is equivalent to the concept of the overall amount of civil war that one might observe in a five-year period (say). Developing this concept rather than the concepts of war onset and war duration separately unifies the two strands of inquiry that researchers have followed and allows us to address an important policy question: What determines the risk of civil war for a given country at any given point in time? To answer this question, we depart from a synthesis of the theoretical model developed in Collier and Hoeffler (2000) and Collier, Hoeffler, and Soderbom (1999). That synthesis provides us with a model which we test against a new panel data-set of 161 countries. We use a random effects panel probit estimator to identify the key economic and political variables that influence war incidence. Our main concern is to I explore in greater depth some of the original results of the studies mentioned above. [n particular, we want to identify the impact of ethno-linguistic and religio ls fractionalization on the probability of violent conflict. Our paper also addresses some technical concerns with the empirical estimations that may arise out of potential path dependence of the concept of war incidence. We consider that some of the important explanatory variables may be potentially endogenous to war outcomes or to ethnic fragmentation and we test for such a relationship before making inferences using the most robust and generalizable empirical results. We find that the net effect of ethno-linguistic fractionalization on the incidence of civil war is an additive sum of its influence on war onset and war duration. Ethnic fractionalization is positively, robustly, and non-monotonically associated with the probability of war incidence. At the same time, we find that a quadratic interaction term of religious and ethnic diversity is negatively associated with the incidence of civil war. These two effects merge the empirical results of Collier et al. with respect to both war onset and war duration. Further, we are able to establish the importance of the lack of political rights as permissive causes of war incidence. The paper is organized as follows. Section 2 provides a detailed summary of the theory of war onset and war duration, summarizing the earlier work of Collier and his associates. This review explains the theoretical propositions and empirical results that we test later in our paper with reference to war incidence. Section 3 describes the data-s,;t and proxy variables and discusses some interesting summary statistics. Section 4 presents the findings of our empirical analysis. Here we also discuss specification issues, including tests of the potential endogeneity of some key explanatory variables. Section 5 presents simple simulations based on our empirical model to see how the probability of war incidence changes in response to variations in the level of ethnic fractionalizationi, economic development, political rights, and natural resources. We conclude with a discussion of the policy implications of this analysis and suggestions for further research. 2 2. The Incidence of Civil War: Analytical Framework The probability of an incident of a civil war at time t (P(w,)) can be expressed as the sum of two probabilities: (1) P(w,) = P(W, r) w, lC) + P(w, m w,_1), where the first right-hand side term is the joint probability of the event of war at time t, provided that time t- 1 was peaceful (i.e. w' is the event that there is no war (or there is peace)); and the second term indicates the probability of war in time t, provided that it was initiated at time t-1 or earlier (i.e. probability that the duration of war at time t is at least one period long). The latter event suggests that the event of the war in time t is a continuation of an event that has started at least one period earlier. The theory of incidence of war then is a combined theory of initiation and duration of war. To the extent that the two events are derived by two different and non-overlapping processes (Collier, Hoeffler and Soderbom, 1999) the determinants of the incidence of war at any given time will be determined by the joint set of the determinants of both events. Thus, before we explore the determinants of war incidence, we must refer to the theory of and empirical findings on war onset and duration, as developed by Paul Collier et al. 2.1 The Collier-Hoeffler Model of the Onset of Civil War Collier (1998; 1999) and Collier and Hoeffler (1999a; 1999b) developed the first economic model explaining the onset of civil wars and distinguished between two possible motives for civil war: "justice-seeking" and "loot-seeking." The Loot-Seeking Rebellion. The authors theorize that civil wars often occur as a result of actors' desire for private gain (loot or greed). Looting can take place after rebel victory or during the fighting. Examples of "loot-seeking" rebellions abound -consider, for example, the Angolan and Colombian rebellions, which have been economically viable for the rebels despite little prospects of military victory. The presence of a "lootable" resource base creates the motive for such rebellions. The realization of the rebellion itself depends positively on the availability of "rebel labor" (i.e. the number and opportunity costs of potential rebels) and negatively on the "government defense labor" 3 (i.e. the government's military strength). Thus, Collier and Hoeffler (1999b) model the risk of the onset of civil war as proportional to the interaction between rebel anld govermment labor. Looting is also characterized by economies of scale. Because loot-seeking rebellion aims at private gains and control of natural resources, the resource-endowme nt and its geographic concentration help determine the size of the rebel group. The size of the group will also be determined by diminishing returns to rebellion, with given levels of natural resources and given sizes of the government and rebel armies. The equilibrium risk of war onset is therefore determined by equating the marginal product of the government and rebel labor to their respective marginal costs for a given level of natural resources. Thus, the authors argue that the risk of civil war initiation increases as the natural resource endowment increases and decreases as the opportunity cost of rebellion increases. The "Justice-Seeking" Rebellion. Rebellions may also be caused by grievance and may aim at achieving justice. The demand versus the supply of justice determine the conditions for the onset of "justice-seeking" rebellions. Collier and Hoeffler (1999, 2000) identify three types of grievance which potentially increase the demand for justice. First, social fractionalization or the presence of a large number of unemployed and uneducated young men could reduce the opportunity cost of rebellion. Second, political repression and third, economic dysfunction (slow economic growth; high inflation; high income or asset inequality) would also decrease the opportunity cost of rebellion. The supply of justice is determined by the cost of achieving justice. This, in turn, is determined by the opportunity cost of rebel labor and it is constrained by the collective action problems associated with providing justice (which is a public good).' To resolve these collective action problems, one needs significant social capital or a vanguard of ' Three types of collective action problems are identified by Collier and Hoeffler (1999b). The first, is a free-rider problem due to the non-excludability of the consumption of justice. The second, is due to the fact that justice-seeking rebellions are characterized by increasing returns to scale at the industry level. Thus, the authors argue that rebellion creates a coordination problem: "everyone may be willing to join a rebellion, but only if sufficient others do so for their participation to be productive." The third is a problem of time consistency, because justice-seeking rebellion reaps rewards only upon victory. The authors also explain ways to resolve the collective action problems in justice-seeking rebellions. 4 committed rebel sympathizers, whose decision to join the rebel movement encourages others to participate in rebellion. Collective action problems become magnified as the level of social fragmentation increases and the probability of incurring punitive costs for rebellion increases. The Determinants of the Onset of Civil War: Collier and Hoeffier's theoretical model suggests that there are several interacting influences on the probability of war onset. Some factors increase the demand for justice, increasing the probability of civil war. But the demand-side influences on justice-seeking war may be offset by the costs of supplying justice, e.g., by political repression and the likelihood of punishment for rebellion. Variables such as the level of ethnolinguistic fractionalization may increase the demand for justice but make the coordination of a rebellion harder. Thus, the net effect of some of these factors on the probability of civil war onset is ambiguous (ex ante). This is especially true for pure "justice-seeking" rebellions, so the authors conclude that "rebellions may be either pure loot-seeking, or have both motivations" since these types of rebellions can overcome collective action problems. Collier (1999) shows that in "loot-seeking" civil wars for a given size of the government army, there exists a threshold for the size of the rebel army, below which the rebel movement risks "getting squashed." Hence, loot-seeking rebel movements must overcome an "entry threshold" before they can successfully wage a civil war. The author identifies three ways of surmounting this threshold. First, the movement may resort to small-scale criminal activities to facilitate its growth into a wider-scale natural resource- looting movement. Second, the movement may depend on external assistance to "pump- prime" into a viable insurgency. Third, the movement could champion grievances as a start-up tool. Collier argues that, while grievances in this case would be conveniently exploited as a matter of discourse, the rebellion would ultimately be sustained by the presence of profitable predation. Collier (p. 8) thus concludes that "The existence of entry thresholds for loot-motivated rebellion is somewhat analogous to the existence of the free-rider problem for grievance-motivated rebellions: each is a major barrier. This suggests that grievance and greed may have a symbiotic relationship in rebellion: to get started rebellion needs grievance, whereas to be sustained it needs greed." 5 To test their theory empirically, Collier and Hoeffler (1999) identified a set of measurable variables that could be used as proxies for the economic and political determinants of civil war. They estimated a probit model using a panel data-set of If2 countries. Their data-set was organized in five-year panels, covering the period 1960- 1994 and combining political variables from the Correlates of War project and econom c variables from the Summers and Heston PWT 5.6 data-set. They explicitly focused cn war initiation or onset (P(w, r 1: C))w Their binary dependent variable "war" was set equal to 1 if a war was initiated during any 5-year period and 0 if no war occurred. They dropped all observations of ongoing war. They then regressed war initiation on education, primary exports as a share of GDP (and their square), a squared interaction term between religious and ethno-liguistic fractionalization, a democracy index and its square, and the natural log of population size. These variables were selected to proxy the theoretical model discussed above. Their empirical results supported most of their model's key predictions: Educational attainment was found to significantly prevent civil wars, as it raises the opportunity costs of political violence. Natural resource-dependence (proxied by primary exports as percent of GDP) was significantly and non-monotonically associated with the probability of war onset, lending strong support to the loot-seeking model. The justice- seeking model was also supported by the evidence, specifically by the significant negative effect of ethnic and religious fractionalization on the likelihood of civil war onset. The positive but less than unitary elasticity for the effect of population has the important implication that while the risk of war increases with the size of population, o-n average larger countries are safer than small ones. The results on the effects ef fractionalization and population have important policy implications: dividing up) countries with diverse societies into smaller and more homogenous countries would actually increase the overall risk of war. A surprising result of Collier and Hoeffler's estimations is that they fail to fin,1 any significant effect for political repression, which contradicts evidence from the political science literature (e.g., Hegre et al. 1999). Moreover, compared to the economic determinants of the loot-seeking model, the evidence on the effect of fractionalization is 6 less robust. We look closer into these two issues in our empirical analysis of section 4, which explores the question of the determinants of the overall incidence of civil war. Before we proceed to the analysis of war incidence, however, we must summarize recent results with reference to the duration of civil war. 2.2 The Collier-Hoeffler-Soderbom Model of Duration of Civil Wars Expanding the theory of the onset of civil war, Collier, Hoeffler and Soderbom (1999) found that onset and duration are qualitatively different processes. Specifically, ethno-linguistic fractionalization, which is not significant as a cause of war (if entered independently in the equation) is the only highly significant determinant of war duration. Moreover, it has a non-monotonic effect: while homogenous or diverse societies tend to experience short wars, polarized societies-consistent with having two or three ethnic groups-tend to suffer prolonged wars. They explain this effect as follows: once the rebellion starts, its duration depends on the capacity of the rebels to stay together. During the course of the war, the government will try to divide-up the rebel movements and win over some factions to its side. In homogenous societies, rebel cohesion is likely to be more vulnerable to such government attempts, given the lack of strong socio- cultural or religious divide between the two camps. Moreover, for the case of diverse societies, maintaining the unity of a movement composed of diverse groups is likely to become harder over time. This leaves the case of polarized societies, for which rebellion can be sustained for a longer period. The authors also simulated the probability of duration and find that there is a high probability that a civil war will end during its first year. However, should the war continue beyond the first year, the probability of peace is radically lower for subsequent years.2 These important new insights into the determinants of war onset and war duration can be combined in an analysis of the overall incidence or amount of civil war, which can 2 They explain this as a consequence of "the systematic over-optimism of rebels which would be predicted by random errors in estimates of the costs and benefits of rebellion. Many wars are mistakes, which do not produce rebel victory but rather military stalemate. Stalemates can be ended by negotiated settlements, but these encounter a time-consistency problem, with the government being unable credibly to 7 be modeled as the sum of the probabilities of onset and duration of war. In section 4, wN e test this framework empirically. In the next section, we describe the data used in ouz analysis. 3. Our Data To test our models of the incidence of civil war, we use a new cross-sectional time-series (panel) data set with five-year frequency covering the period 1960-1999. The data set includes economic, social, and political variables for 161 countries as well as data on war-related variables for those countries that experienced war. Our coding of civil war events represents a synthesis of the Correlates of War project (Singer and Small 1994 , the Uppsala University data-set (1997), Doyle and Sambanis (2000), and the State-Failure project (1997), as well as other sources.3 We classify a violent conflict as a civil war if the following conditions apply:4 (a) The war caused more than 1,000 thousand deaths;' (b) The war challenged the sovereignty of an internationally recognized state; (c) The war occurred within the territory of that state; commit to settlement terms. As a result, military stalemates persist" (Collier, Hoeffler, Soderbom, 1999, 17). 3 Detailed description of the coding of all variables, including country-specific comments on the start- end dates of each war and other pertinent information may be downloaded, along with the data, at: http:\\www.worldbank.org\research\conflict\.... [to be posted online at the time of publication] 4 This definition is widely used; see, for example, Licklider (1995). Sources for coding war incidence include: Singer and Small (1994); Uppsala University project on civil wars and Journal of Peace Studies annual data-sets on armed conflict (various years); The State Failure Project (1995); Licklider (1995; 1993); Mason and Fett (1996); Regan (1996); Walyer (1997) SIPRI yearbooks (1987-1998); secondary texts, including case-studies and official reports, such as: LeMarchand (1987); Callahan (1997); Doyle, Orr, and Johnstone (1997); Rotberg (1998); Deng (1999); Stuart-Fox (1998); Sambanis (1999). Human Rights Watch reports on Sierra Leone; The Democratic Republic of the Congo; Uganda; Kosovo; Bosnia; Algeria. State Department reports on Bangladesh; Laos; Burma; Chad; Djibouti; Egypt; Cambodia; Guinea-Bissau; Peru; Philippines. Other sources: CIA World Factbook (various years); World Almanac; Sivard (1991); Armand (1995). 5 Most of these conflicts have produced 1,000 deaths annually and this is the threshold used to classif." a conflict as a civil war in the Singer and Small (1994) and Uppsala University projects. However, the codebook of the ICPSR study which includes the international and civil war data files does not mention ar annual death threshold (rather, this is mentioned in Singer and Small 1982) and no annual death data are available from the Correlates of War project. Thus, our civil wars classification includes a small number of conflicts that have produced more than 1,000 deaths over the duration of the war, but not necessarily on an annual basis for the duration of the war. The variable DATASET denotes such cases as follows: if 8 (d) The state was one of the principal combatants; (e) The rebels were able to mount an organized military opposition to the state; (f) Combatants were concerned with the possibility of living together under the same political unit after the end of the war. We code our dependent variable AT_WAR to study the overall incidence of civil war. AT_WAR equals 1 for all observations during which the war was ongoing and 0 otherwise. We collected data on a number of variables, which we used in this paper as proxies for our empirical tests. We briefly describe these variables below (variable names are given in parentheses). We proxy opportunity cost of rebel labor by the per capita real income level (RGDP).6 Other possible proxies for opportunity cost include education levels (both primary and secondary schooling), degree of urbanization, life expectancy, infant mortality, and other such variables. Political rights can be proxied by the openness of political institutions (POLITY), which is the average of an index of democracy (DEM) minus an index of autocracy (AUTO).' We proxy the level of ethnic diversity by two different measures: first, with the index of ethno-linguistic fractionalization (ELF), which was measured in the 1960s and ranged from 0 (ethnic homogeneity) to 100 (extreme ethnic heterogeneity);8 and second, with an index of ethnic heterogeneity (EHET) which is the sum of indices of racial division, linguistic division, and religious division, created by Vanhanen (1999) and ranging from 0 (lowest heterogeneity) to 144 (highest heterogeneity).9 We proxy natural resource-dependence by primary exports as a percent DATASET is greater than or equal to 3, then an annual death toll of 1,000 deaths or more can be assumed; if DATASET is less than 3, then annual deaths may fall below 1,000 for part of the war's duration. 6 Various sources were used, which cause some problems with the comparability of GDP data. Missing values are imputed from World Bank data on GDP at market values (measured at current US $) and GDP per capita for 1960 and 1985 (World Bank data). ' The source is the Polity98 data-set. DEM is the democracy index (from I to 10, with 10 being the highest). AUTO is the autocracy index (from I to 10, with 10 being the highest). POL is the democracy index minus the autocracy index and ranges from -10 (lowest rights) to 10 (highest rights). The ELF index was created by Taylor and Hudson (1972); see also Mauro 1995). The EHET index was created by Vanhanen (1999). This is measure reflects a more inclusive definition of ethnicity based on a combination of racial, linguistic, and religious differences. 9 of GDP (PRIMX).'0 We also measure the size of the country by the natural log of its population (LOGPOP). 3.1 Some Global Patterns on the Incidence of Civil Wars The global percentage of countries that experienced a civil war rose steadily fromn 7% in 1960-64 to a staggering 28% in 1990-94, which witnessed the collapse of tLe former Soviet Union and the end of the Cold War (see Figure 1). However, the global incidence of civil wars declined sharply in the following five years, with only 13% of the world affected by civil wars. However, at the close of the 2U" century the world is less safe than 40 years earlier. Except for three periods (1970-74, 1985-89, 1995-99) more than half of the civil wars were fresh wars, started within the period. Moreover, the end of the Cold War also marked the highest rate of new wars during the past 40 years. Our indicators of social fractionalization (ELF, EHET) are not time-varying and population size and the share of primary exports remain relatively stable over time. The pivotal indicators of economic and political development (RGDP and POLITY) have improved considerably over time (see Table 1). Mean income per capita more than doubled from about $2,153 in 1960-64 to reach about $4,593 in 1995-99. Moreover, political rights improved from low average of -0.2 in the early 1960s to more than 3 in the second half of 1990s. This evidence appears to be inconsistent with the rising risk of civil wars in the world. However, average behavior masks the considerable diversity in terms of the incidence of wars as well as the progress in economic and political development. This is evident by the high and rising dispersion (standard deviations) around these average indicators. Indeed, in terms of the risk of civil wars some regiors have become a lot safer because they achieved considerable economic and political development over the last 40 years. Other regions, however, have lagged behind and, therefore, have become more vulnerable to risks of civil wars (see Figure 2). '° In a future version of this study we plan to measure the unemployment rate for males at the beginning of each five-year period (UNEMPL) to proxy the economic opportunity costs of rebellion for potential rebels (we use the male unemployment rate since rebels are typically males). 10 4. Estimating the Incidence (Amount) of War In this section, we test the predictions of the literature reviewed in section 2 in the context of an overall incidence model. The incidence of a civil war (coded: AT-WAR) is a sum of the two disjoint events of a new war (WAR-ST) and a war that started at an earlier date (War_DUR). We test three hypotheses: That all economic and political factors as well social fractionalization are robustly associated with the incidence of civil wars at a given point in time; Social fractionalization (especially when there is combined ethnic and religious fractionalization) reduces incidence through its effect on the onset of new wars; Ethnic fractionalization has an additional influence on incidence of wars- operating through its effect on duration-where its positively and non-monotonically associated with the risk of incidence. We estimate an encompassing incidence model, which accounts for the above three hypothesis (hereafter the Elbadawi-Sambanis (ES) model). Our inferences are based on regression results using a random-effects panel probit estimator (by contrast, Collier and Hoeffler (1999, 2000) estimate the probability of war onset using a pooled probit model)." Our choice of estimator is based on evidence of significant random effects'2 in all our regressions (see reported results on the rho coefficient in Table 2). Our dependent variable, AT_WAR, is coded 1 if there is a war and 0 otherwise. Except for- the social fractionalization variables (as well as population size)-which are assumed exogenous-all other economic and political variables are lagged. This is consistent with the specification of the probability of incidence as the sum of two probabilities conditional on information at time t- 1. The regressors include three sets of variables. The first set of variables measures economic grievance and interest and includes once-lagged real per capita GDP " Collier and Hoeffler (2000) do try one specification of a random effects model but they do not use that model as the basis for their inferences. 12 In the event that random effects are significant, simple pooled panel probit models produce biased estimates (e.g., Greene, 1997). 11 (RGDPLAG); once-lagged growth rate of per capita GDP (YGL 1); once-lagged share of primary exports as percent of GDP (PRIMXLAG) and its square (PRIMXLAG2).'3 The second set of variables measures political grievance and include a once- lagged index of political rights (POLL1) and its square (POLL12). We also lag this variable twice (POLL2) to test the significance of a lack of political rights as a permissive -not a proximate-cause of violent conflict (as a permissive cause, POLL2 would take longer to have an impact on the probability of an incident of civil war). Further, the impact of civil war on the polity of a country is severe, so two lags would reduce the likelihood of reverse causality in this relationship. We also include the square of polity (POLL12) to account for a possible non-monotonic relationship between democracy levels and civil war over a long period. It is argued that civil war is less likely in either perfect democracy or extreme repression (though for different reasons) and that the risk of war rises with imperfect democracy or lesser degrees of repression (Hegre et al., 1999). The third set of variables measures social influences on violent conflict and includes an index of ethno-linguistic fractionalization (ELF) and its square (ELF2), which is alternatively measured by an index of ethnic heterogeneity (EHET) and its square (EHET2); and, following Collier and Hoeffler (1998) a quadratic interaction term of ethnic and religious fractionalization (ELF2RF2) and the natural log of population size (LOGPOP). 4.1 Testing for Endogeneity in the ES Model Recent literature suggest that both economic and political variables may, at least partially, be influenced by the extent of social fractionalization (e.g., Easterly and Levine, 1997; Alesina, Baqir and Easterly, 1999; Collier, 1999; Collier and Binswanger, 1999; Rodrik, 2000). Therefore, both the incidence of civil wars as well as the economic and political variables associated with it may be driven by the same processes-which, in tum, depend on social diversity. Rivers and Vuong (1988) provide a solution to the " Data for primary exports per capita are very scant. So as not to lose too many observations due to the inclusion of this variable, we have imputed missing values of the variable using data on other variables which are highly correlated with primary exports, specifically, overall trade figures and manufactures exports as percent of total merchandise exports. 12 potential endogeneity of continuous right-hand-side variables in binary dependent variable (probit) models, using cross-sectional data. They provide a test for endogeneity as well as a formula for computing the correct standard errors of the endogenous variables. Extending Rivers and Vuong framework to panel data, we estimate a panel data two-stage probit model of the following form: (2) Y,l = z;ji + if ,1, (3) P(wj, ) = Xj 51 + Y,,,l '2 + u j, (4) E(uj,Yj,_,) # O, where i = 1,...n (number of countries) and t = 1,..., k (number of periods); and P(w) is the probability of incidence of civil war; Yj, l represents the set of lagged economic and political (potentially) endogenous explanatory variables; X, is the set of time-invariant (or semi-time invariant) exogenous explanatory variables (social fractionalization variables and population size); and Z,, is a vector of instruments, which includes the exogenous variables in the structural equation (3) a well as (higher-order) lagged dependent and endogenous variables (for r < t - 2 ). The probit model of equation 3 includes time varying right-hand side variables in one-period lagged, rather than current, form. This specification directly follows from the probability statement of equation 1, which specifies the probability of incidence of war as a sum of two probabilities, given information at time t-1. However, potential endogeneity of at least some of these lagged political and economic variables (as suggested by equation 4) should not be ruled out. These lagged variables will be endogenous if, for example, the disturbance terms of structural equation (3) are serially correlated (i.e. u;, = p ui,l + Si, ). We estimate equation 2 (in our case, using random effect regression),'4 obtaining fitted values for each potentially endogenous variable, and then construct a vector Ck,1 of the predicted residuals of those variables. The second stage involves estimating the 13 following panel probit model, which includes all exogenous and potentially endogenous variables along with vector of the residuals: (5) P(w,,) = XW + Yl82 + C6'3 +6,e. For each potentially endogenous variable y,, the null hypothesis of exogeneity can be tested by a simple t-test of the coefficient of the auxiliary variable 6i . Moreover, even if the test suggests that the variable in question is endogenous (i.e. the t-statistic is significant) the estimated coefficient corresponding to y, in the equation is unbiased. In case of endogeneity, however, corresponding standard errors and t-statistic for the endogenous variable will be incorrect. Standard inference remains valid for all other non- endogenous variables. For variables found to be endogenous, correct inference in this model would require estimation of a complicated variance-covariance parameter or by simulating consistent large sample standard errors by bootstrapping methods. Regression 1 of Table 2 estimates the panel probit model of equation 5 above, using the residuals from the panel regressions equivalent of equation 2. The results of equation 2 (the first stage regressions) are reported in Appendixl. Based on the statistical significance of the coefficients of the R variables of regression 1, we cannot reject the null hypothesis of exogeneity in all cases except for POLL1. Based on this test we used Plp, the fitted value of POLLI, in regressions 2-5, and estimated consistent and efficient standard errors for P1 p using bootstrap techniques."' "4 We selected this over a fixed effects (fe) model because fe models dropped the ELF and ELF2 variables from the estimation, reducing the number of exogenous variables in the equation. '5 The bootstrapping technique (developed by Efron 1979, 1982) can be used to estimate coefficients and standard errors and works as follows: N observations are randomly drawn with replacement from my data-set one thousand times. The random draws are based on a random number. This process generates the distributions of statistics of interest (in this case the coefficient and standard errors of partition and the other explanatory variables in our model). Based on these distributions, we computed the means and standard deviations of these statistics. 14 4.2 Testing the Hypotheses of the ES Model We base our inferences on regressions 2-8.16 We adopt the principal of 'moving from general to specific,' where we start from regression 2 and sequentially drop insignificant terms in subsequent regressions. Regression 4 is the most parsimonious model, where only robustly significant variables are kept in the regression. In regressions 5 and 6, Plp (instrumented POLL1) is replaced with POLL2; and in regressions 7 and 8 ELF is replaced by EHT. Overall, our results confirm the three pivotal hypotheses stated above, which corroborates our specification of the probability of the incidence of civil war as a function of economic, political and social fractionalization variables. Moreover, we confirm the hypothesis that the set of these variables is an additive sum of the determinants of two disjoint events: that war has just started at time t; or that it started at time t-1 or earlier. In particular, social fractionalization has two different and statistically significantly different channels: one corroborating the theory of onset of civil war and the other corroborating the theory of duration. Therefore, these results should be interpreted as lending strong support to both theories. A brief description of the specific results follows. However, before we proceed we need to draw an important distinction between regressions 1-6 and 7-8. The first set is based on he assumption that social fractionalization is characterized by orthogonal ethno- cultural (ELF) and religious (RF) diversities. In this case, the combined effect of both types of fractionalization is represented by a covariate term (ELFxRF). Instead, regressions 6-7 assume that the two types fractionalization are complimentary, and therefore, the aggregate effective is represented by an additive index of ethnic 16 The panel probit regressions 2-8 (of Table 2) simultaneously account for significant country-specific random effects as well as potential endogeneity of some explanatory variables. These regressions, therefore, can be regarded as "statistically-correct" (Hendry, 198$) and are therefore adequate for testing the theory of hazard of civil war as well undertaking simulations on the relative influences of various determinants. I5 heterogeneity (EHET)."' Our analysis focuses on the first set, the main results remain robust regardless of the definition adopted, however. For the remainder if this section we describe four main findings suggested by the results of Table 2. First, unlike Collier-Hoeffler who fail to find robust association between political rights and war initiation, we find that low political rights (Plp) are significantly aad negatively correlated with the incidence of war. This relationship persists even when we lag our variable twice (POLL2, in regressions 5-6) to test if political repression operates as a permissive cause of civil war. Our results suggest that the demand for justice, which increases the risk of war, dominate the negative influence of increased cost of supplying justice. However, we find that the quadratic term (POLL12) is highly insignificant (regressions 1 and 2)18 and was, therefore, dropped in subsequent regressions. Our results, therefore, do not support a significant non-monotonic effect for political rights on the incidence war (regressions 2) as predicted by the political science literature (Hegre et al., 1999). Second, the risk of incidence of civil war is robustly and negatively associaled with initial levels of economic development (RGDPLAG) and economic grovwth (YGLAG), less robustly. This finding lends strong support to the Collier-Hoeffler economic theory of civil war. Further, we find that primary exports as a percent of G]P (PRIMXLAG) have a positive, significant, though non-monotonic association to the nsk of civil war. Again, this corroborates the results of the earlier literature. The presence of natural resources (proxied by primary exports) seems to provide easily "lootable" assets for "loot-seeking" rebels or convenient sources of support of "justice-seeking" movements (Collier 1999). However, beyond a certain range natural resources become a formidable instrument in the hands of govermments, which can use them to fund armies, buy popular support, and compensate external allies (though this non-monotonic effec: is '7 The EHET index is more inclusive than ELF, it reflects social conditions in the 1980s and 1990s and is available for many more countries than ELF. 1 A likelihood ratio test of the model restricted to exclude POLL 12 could not reject the null hypothesis of no-significance of POLL12 with a chi2(1) = 0.02 and Prob > chi2 = 0,8752. 16 not as robust as the initially positive relationship between primary exports and the incidence of civil war). Third, our results corroborate the duration of civil wars literature (Collier, Hoeffler and Soderbom, 1999) in that ethnic diversity and the risk of incidence of incidence of civil war were positively and non-monotonically associated. This relationship is highly significant and robust, regardless of the definition of social fractionalization adopted (regressions 2-8). This result suggests that, like ethnic homogeneity, ethnic diversity actually reduces rather than increases the risk of incidence of war. The negative, and robust, association between the probability of incidence of civil war and the quadratic covariate term (ELFxRF) suggests that when religious and ethnic fractionalization are orthogonal, diverse societies can be even safer than homogeneous societies (regressions 2-6). This latter finding lends support to Collier-Hoeffler theory of onset of civil war, which emphasizes the interpretation of social fractionalization as part of the cost of "collective action" in justice-seeking rebellions. Therefore, other things equal, social fractionalization is associated with high incidence of civil war only when it borders polarization (when each of the largest two groups accounts for 60-40% of the population). Finally, our results suggests that population size is positively and robustly associated with the risk of civil war. Therefore, countries with smaller population size, individually, face lower risk of war. However, a region composed of smaller countries (such as Sub-Saharan Africa) face a higher risk. This is because, the risk of war does not increase proportionately with population size (Collier and Hoeffler, 1 999b). With these results at hand, we can now answer an important policy question: how effective is economic development as compared to political liberalization in reducing the risk of civil war under different underlying socio-cultural conditions? We turn to this question next. 5. Conclusion: How Much Can the Risk of Civil Wars be Reduced? We have found that, when we shift our attention from the discrete events of war initiation and war duration and we consider the determinants of overall incidence of civil 17 war, political variables are important in influencing the probability of observing a war event. This paper has suggested that, for policymakers interested in reducing the overall amount of war, a better understanding of the concept of civil war incidence is necessarY and we have outlined some of the important determinants of war incidence globally. Our empirical model can be used to assess the relative impact of political rights, improved living standards and diversified economies on the risk of civil war. In the rest of this paper, in lieu of summarizing the results just described, we will use our most parsimonious regression-regression 4 in Table 2- to simulate the partial effects of the three core determinants of war incidents and this will allow us to explain how we may go about reducing the overall amount of civil war in the world. In Table 3, we conducted some simple simulations using regression 4 by varying the three core variables while holding all other variables constant at their sample median levels (Figures 3-5 also display the same information). Table 3 and Figures 3-5 reveal a number of important conclusions. First, achievements in either political liberalization, or economic development would reduce the risk of civil war regardless of the degree cf ethno-linguistic fractionalization in a society. Second, this effect is amplified in polarized societies, since very homogeneous and, to a lesser extent, more diverse societies have very lower probabilities of civil war (see Figures 4 and 5, especially i. Third, a greater reduction in the risk of civil war in polarized societies can be achieved by political rather than economic liberalization (compare the difference between the two lines in each of Figures 3 and 4). At very high levels of political freedom, ethnic diversity-even polarization-has a minimal impact on the risk of civil war (see Figure 3). Fourth, economic diversification that would reduce a country's reliance on primary exports would also reduce the risk of civil wars, especially in polarized countries (Figure 5). These results also suggest a strategy for preventing future civil wars that would prioritize political liberalization rather than economic development. Clearly the best possible results would be achieved by a combined improvement on all fronts: political reform, economic diversification and poverty reduction. However, with the often-limited capacity in the type of countries that are likely to be vulnerable to civil wars, the start 18 may have to be based on one rather than three fronts. It can be argued that, for three reasons, this should be the political arena. First, to significantly reduce the risk of civil wars via economic achievements very high standards of living or substantial degree of economic diversification will be required. Again, given the initial conditions in these countries, this may take long time to achieve. Second, due to a multiplicity of factors (demonstration effects, globalization, etc.) the pace of political reforms toward better governance and improved political rights could be accelerated. Third, in socially diverse societies such achievement at the political front is a prerequisite for stable economic growth (e.g., Rodrik, 1998, 2000; Collier 1999b). Further directions for this research should include refinements and expansions in the data-set used in our study and the studies of Collier and Hoeffler (2000) and others, as well as attempts to distinguish between the causes of different types of civil war (e.g., ethnic and revolutionary civil wars). Finally, the technical and policy benefits as well as shortcomings of our concept of war incidence should be weighed against research designs that distinguish between war initiation and war duration and the results from these two types of research designs should be compared and contrasted for consistency. The most significant divergence in the policy implications of the two research designs lies in the role of political institutions: do inclusive, flexible, and representative political institutions reduce the risk of civil war by reducing political grievance? Does war itself corrupt such institutions in post-war periods? Is political openness a function of economic variables and, hence, less significant than poverty alleviation and economic modernization with respect to their potential to reduce the risk of civil war? Our research design would suggest that political variables are important and that they should be carefully integrated in any framework designed to better understand the causes of civil war. In that respect, our findings invite further comparisons with the findings of Collier and Hoeffler (2000). In further research, we plan to explore further the channels through which political variables may be important and examine if it is possible to integrate our results with those of the other major studies referenced in this paper. 19 Figure 1: Mean War Incidence & Onset by Five-Year Period 0.3 0.25 0.2 0.15 0.oo115 N l l i l | X*at war a war start 60- 60- 65- 70- 75- 80- 85- 90- 95- 99 64 69 74 79 84 89 94 99 Years 20 Figure 2: Panels of War Incidence, Polity Level, and Real Income by Region and Five-Year Period Mean Incidence of Civil War by Region 0.45 0.4 0 35 7iZ4i+iSSA c n 0.25 N MNXAC 0.2 23 01 2 -K Eur/Nam 0.05 1960-64 1965-69 1970-74 1975-79 1980-84 1985-89 1990-94 1995-99 Mean Polity Indices By Region 10 8 V 6 xt s4 S. SAC S2 _ __-LAC MENA ASIA 2: m Eurl[Nam -4 -6 -8 Mean Real Per Capita GDP (PPP-adjusted) 12000 r 10000 SSA t 8000 I -- LAC I > 6000 = .- _ _MENA o = 7jII'II7 ASIA I 4000 |_ *. i - :4 . . :< c'S-i 4000 <; b . Eur/Nam 2000 * - g _ _ + _ + ~~~~~~~~~~~~~~~- ~Series6 Oo <'' , 1960-64 1965-69 1970-74 1975-79 1980-84 1985-89 1990-94 1995-99 21 Table 1: Summary Statistics by Five-Year Period (Number of Observations, Minimum and Maximum Values are for the entire period, 1960-1999) Variable: Ethno- At War Polity Real GDP Prim. Religious ling Ethnic Population War Start Index GDP Growth Exports Divers. diversity Diversity Iog Observations 1252 1144 1054 1061 767 1237 932 1000 1264 1 268 Minimum (1960-1999) 0 0 -10 56 -.107 -.0459 0 0 0 10.621 Maximum (1960-1999) 1 1 10 33946 .108 2.139 79.05 93 177 20.908 Means & Standard Deviations 1960-1999 .170 .091 -.15 3713 .0156 .175 35.74 41.92 44.15 15.35 Mean & s.d. (.375) (.288) (7.53) (4076.4) (.0311) (.161) (24.39) (29.69) (35.96) (1.91) 1960-1964 .070 .070 -.17 2152.9 .0211 .172 35.31 41.92 44.15 14.98 Mean & s.d. (.257) (.257) (7.40) (2154.3) (.026) (.026) (24.52) (29.79) (36.06) (1 938) 1965-1969 .141 .101 -.85 2589.8 .0249 .174 35.31 41.92 44.15 1:.09 Mean & s.d. (.350) (.302) (7.42) (2592.4) (.0224) (.161) (24.52) (29.79) (36.06) (I 92) 1970-1974 .141 .063 -1.77 3073.4 .0235 .172 35.31 41.92 44.15 15.20 Mean & s.d. (.350) (.244) (7.34) (2990.6) (.0326) (.160) (24.52) (29.79) (36.06) (1 91) 1975-1979 . 174 .098 -1.80 3596.2 .0221 .196 35.31 41.92 44.15 15.31 Mean & s.d. (.380) (.299) (7.54) (3427.4) (.0311) (.206) (24.52) 29.79 (36.06) (1 90) 1980-1984 .193 .107 -1.31 4642.2 -.0053 .210 35.31 41.92 44.15 15.40 Mean & s.d. (.396) (.310) (7.63) (5317.2) (.032) (.237) (24.52) 29.79 (36.06) (1 89) 1985-1989 .224 .083 -.630 4336.8 .00916 .163 35.31 41.92 44.15 15.51 Mean & s.d. (.418) (.277) (7.72) (4389.4) (.0286) (.128) (24.52) 29.79 (36.06) (I 89) 1990-1994 .281 .166 1.99 4583 --- .155 35.31 41.92 44.15 15.62 Mean & s.d. (.451) (.374) (7.05) (4816) (.134) (24.52) 29.79 (36.06) (I 89) 1995-1999 .130 .047 3.08 4592.2 --- .160 35.31 41.92 44.15 15.69 Mean & s.d. (.337) (.213) (6.76) (4810.6) (.136) (24.52) 29.79 (36.06) (1.89) 22 Table 2: Random Effects Probit Models of the Incidence of Civil War in Five-year Panels Coefficients and Standard Errors (in parentheses); *** significant at .01; ** significant at .05; * significant at .10 Explanatory Model 1 Model 2 Model 3 Model 4 Model 5 Model 6 Model 7 Model 8 Variables: constant -22.91*** -20.70*** -20.63*** -21.04*** -20.46*** -22.61*** -16.112*** -13.69*** (3.56) (3.46) (3.49) (3.03) (3.16) (3.70) (2.835) (3.12) PRIMXLAG 12.08* 8.140* 7.92* 7.976** 7.471 8.169** 5.996* 4.57 (primary exports) (6.93) (4.57) (4.73) (3.37) (4.861) (3.282) (3.51) (3.58) PRIMXLAG2 -16.79 -12.14 -11.85 -16.59** -11.087 -15.54** -10.29 -8.41 (isxp squared) (13.19) (8.680) (9.09) (6.77) (10.17) (6.49) (6.87) (7.13) RGDPLAG -.00025*** -.00022*** -.00022*** -.00019*** -.00023*** -.00019*** -.00019*** -.00013** (Real GDP, PPP) (.00009) (.00008) (.00008) (.00007) (.00007) (.00007) (.00007) (.00006) YGLI (Real per cap -22.21 -10.29** -10.08* -8.370 -8.79** -6.76* GDP growth rate) (17.11) (5.264) (5.73) --- (6.26) --- (3.83) (3.664) POLLI -.098*** (Polity index) (.0353) --- --- --- --- --- --- Plp (POLLI fitted/ -.107*** -.1066*** -.1062*** -.093** Instrumented) --- (.035) (.0359) (.0289) --- --- (.030) --- POLL12 .0022 .00077 (Polity squared) (.0068) (.0048) --- --- --- --- POLL2 -.088*** -.089*** -.0524* (Polity lagged twice) --- --- --- --- (.027) (.022) --- (.0293) LOGPOP (Log of 1.09*** .9833*** .979*** .996*** .979*** 1.094*** .850*** .6792* population size) (.174) (.169) (.169) (.156) (.164) (.1950) (.158) (.1708) ELF (ethnolinguistic .1748*** .1623*** .1619*** .1553*** .1519*** .1508*** Diversity) (.0378) (.0381) (.0401) (.028) (.0308) (.0269) --- --- ELF2 -.0015*** -.00142*** -.0014*** -.0013*** -.0013*** -.0013*** (ELF squared) (.00039) (.00037) (.00039) (.00028) (.0003) (.0003) --- --- ELF2RF2 (ELF * -5.80e-08*** -5.84e-08** -5.74e-08** -5.89e-08** -4.48e-08* -3.58e-08 religious diversity) (2.24e-08) (2.42e-08) (2.44e-08) (2.50e-08) (2.62e-08) (2.27e-08) --- --- EHET .036*** .0421** (diversity index) --- --- --- --- --- ... (.013) (.0212) EHET2 -.0002** -.00024* (EHET squared) --- --- --- --- --- --- (.0001) (.00014) ResPip -.138*** (POLLI residual) (.0513) --- --- --- --- --- --- --- ResPlp2 .0059 (POLL 12 residual) (.0082) --- --- --- --- --- ResPly -.00007 (RGDP residual) (00030) --- --- --- --- --- --- --- ResPIg -12.629 (YGLI residual) (17.202) --- --- --- --- ------ --- ResPIx 5.804 PRIMXLAG residual (7.909) --- --- --- - --- --- --- ResPlx2 -6.772 PRIMXLAG2 residual (15.822) --- --- --- --- --- --- Rho .899*** .892*** .891*** .890*** .886*** .893*** .876*** .783*** (Corr. Coeff.) (.028) (.034) (.035) (.027) (.030) (.026) (.035) (.065) Observations: 500 500 500 516 512 535 500 561 Log-likelihood: -168.147 -170.772 -170.784 -180.594 -176.27 -184.805 -173.734 -191.368 23 Table 3: Probability of an Incident in Civil War at Variable Levels of Political Rights, Real Income, and Primary Export Dependence in Ethno-linguistically Homogeneous, Polarized, and Heterogeneous Countries. (One Variable Changes; Rest are Set at their Sample Median) Level of Medians of Quartiles of Quartile Probability of an Ethno-linguistic Polity, RGDP & Values of incident of civil war Fractionalization PRIMELAG Variable In a 5-year Period Bottom 10% POLL2 -9 .00016311 VERY Median POLL2 -5 .00002926 Top 10% POLL2 10 9.935e-09 Bottom 10% RGDP 923 .00006707 HOMOGENEOUS Median RGDP 1941 .00002926 Top 10% RGDP 4644 2.686e-06 Median 1" Bottom 10% PRIMEXAG .034 1.957e-06 Quartile ELF Median PRIMEXAG .159 .00002926 Top 10% PRIMEXAG .333 .0000254 Bottom 10% POLL2 -9 .45577208 VERY Median POLL2 -5 .29588664 Top 10% POLL2 10 .01655767 Bottom 10% RGDP 923 .36832686 POLARIZED Median RGDP 1941 .29588664 Top 10% RGDP 4644 .14292801 Median 2nd & 3rd Bottom 10% PRIMEXAG .034 .12850299 ELF Quartiles Median PRIMEXAG .159 .29588664 Top 10% PRIMEXAG .333 .28452882 Bottom 10% POLL2 -9 .01707874 VERY Median POLL2 -5 .00548921 Top 10% POLL2 10 .00001753 Bottom 10% RGDP 923 .00955432 HETEROGENEOUS Median RGDP 1941 .00548921 Top 10% RGDP 4644 .00105473 Median 4th Bottom 10% PRIMEXAG .034 .00084297 Quartile ELF Median PRIMEXAG .159 .00548921 Top 10% PRIMEXAG .333 .00498949 24 Figure 3: Probability of Civil War at Low/High Levels of Political Rights and Variable Ethno-Linguistic Fractionalization P(war)lbottom 1 0% Polity P(war)Itop 10% Polity .6 .s i .4 /S 2 .2/ 0 60 100 Ethnolinguistic Fractionalizatio Prob warjvariable ELF & Polity Figure 4: Probability of Civil War at Loiw/High Levels of Income and Variable Ethno-Linguistic Fractionalization -P(war)lbottom 10% RGDP A, P(war)ltop 10% RGDP .6 .4 .2A 0 50 -___oo' h Ethnolinguistic Fractionalizatio Prob warivariable ELF & RGDP 25 Figure 5: Probability of Civil War at Low/High Levels of Economic Diversification (Measured as Level of Natural Resource-Dependence) and Variable Ethno-Linguistic Fractionalization P(war)Ibottom 10% PRIMEX A P(war)jtop 10% PRIMEX .4 .3 .2 .1 w 0 - Ethnolinguistic Fractionalizatio Prob warlvariable ELF & PRIMEX 26 Appendix 1: First-Stage Regressions for Two-Stage Probit Model (Model 1, Table 2) ** Note: isxp is the sane as PRIMXLAG; isxp 2 is the same as PRIMXLAG2. * Model 1 -- expanded/general model w/ exogeneity tests * Stage 1 regressions -- include in appendix xtreg polll rgdpl2 ygl2 poll2 poll2s geoper isxpll isxp2ll elf elf2 elf2rf2 logpop, re i(id) Random-effects GLS regression Number of obs = 516 Group variable (i) : id Number of groups = 110 R-sq: within = 0.1048 Obs per group: min = 1 between = 0.9660 avg = 4.7 overall = 0.8426 max = 5 Random effects u_i - Gaussian Wald chi2(11) 2697.98 corr(u_i, X) = 0 (assumed) Prob > chi2 0.0000 polll I Coef. Std. Err. z P>IZI [95% Conf. Interval] rgdpl2 1 .0001229 .0000559 2.200 0.028 .0000134 .0002325 ygl2 1 .288755 4.826611 0.060 0.952 -9.171228 9.748738 poll2 1 .829857 .022217 37.352 0.000 .7863124 .8734015 poll2s 1 .0094295 .0050355 1.873 0.061 -.00044 .019299 geoper I .0437343 .0176337 2.480 0.013 .0091728 .0782958 isxpll 1 2.685052 3.090068 0.869 0.385 -3.371371 8.741475 isxp2ll 1 -7.001812 4.620386 -1.515 0.130 -16.0576 2.053978 elf I -.0034412 .0212057 -0.162 0.871 -.0450035 .0381211 elf2 1 .0001347 .0002736 0.492 0.622 -.0004015 .000671 elf2rf2 I -4.28e-08 2.29e-08 -1.865 0.062 -8.78e-08 2.17e-09 logpop I -.0154961 .1203178 -0.129 0.898 -.2513146 .2203224 -cons I -1.639858 2.08143 -0.788 0.431 -5.719385 2.439669 ---------+------------------------------------------------__-----------------_ sigma u I 0 sigma e 1 2.6861206 rho I 0 (fraction of variance due to u_i) ---------------------------------------------------------------------__------_ . predict Plp (option xb assumed; fitted values) (772 missing values generated) . gen ResPlp = Plp-polll (772 missing values generated) . xtreg polll2 rgdpl2 ygl2 poll2 poll2s geoper isxpll isxp2ll elf elf2 elf2rf2 logpop, re i(id) Random-effects GLS regression Number of obs = 516 Group variable (i) : id Number of groups 5 110 R-sq: within = 0.1067 Obs per group: min 1 between = 0.9306 avg - 4.7 overall = 0.7182 max = 5 Random effects u_i Gaussian Wald chi2(11) = 1284.65 corr(u_i, X) = 0 (assumed) Prob > chi2 = 0.0000 po1112 I Coef. Std. Err. z P>Izl [95% Conf. Interval] rgdpl2 i .0011477 .000306 3.750 0.000 .0005479 .0017475 ygl2 1 16.76263 26.43255 0.634 0.526 -35.04422 68.56947 27 poll2 1 .1667502 .1216697 1.371 0.171 -.0717181 .4052185 poll2s 1 .7227519 .0275768 26.209 0.000 .6687024 .7768014 geoper I -.0314098 .0965698 -0.325 0.745 -.2206831 .1578634 isxpll 11.88033 16.92251 0.702 0.483 -21.28719 45.04785 isxp2ll 1 -24.02909 25.30318 -0.950 0.342 -73.62241 25.56423 elf I -.1733159 .1161311 -1.492 0.136 -.4009286 .0542968 elf2 1 .001199 .0014983 0.800 0.424 -.0017377 .0041357 elf2rf2 I 8.20e-08 1.26e-07 0.652 0.514 -1.64e-07 3.28e-07 logpop -1.013059 .6589109 -1.537 0.124 -2.3045 .278383 -cons 1 32.5331 11.39878 2.854 0.004 10.19189 54.87431 sigma u 1 0 sigma_e 1 15.69877 rho I 0 (fraction of variance due to u_i) . predict Plp2 (option xb assumed; fitted values) (772 missing values generated) . gen ResPlp2 = Plp2-polll2 (772 missing values generated) . xtreg rgdplag rgdpl2 ygl2 poll2 poll2s geoper isxpll isxp2ll elf elf2 elf2rl2 logpop, re i(id) Random-effects GLS regression Number of obs = 516 Group variable (i) : id Number of groups = 110 R-sq: within = 0.8627 Obs per group: min = 1 between = 0.9499 avg = 4.7 overall = 0.9611 max = 5 Random effects u_i - Gaussian Wald chi2(11) 4690.17 corr(u_i, X) = 0 (assumed) Prob > chi2 = 0.0000 rgdplag I Coef. Std. Err. z P>lzI [95% Conf. Interval] rgdpl2 1 .8339643 .0165481 50.396 0.000 .8015306 .866398 ygl2 1 12379.11 813.0732 15.225 0.000 10785.52 13972.71 poll2 13.75505 6.453581 2.131 0.033 1.106259 26.40383 poll2s 1 1.532974 1.224424 1.252 0.211 -.8668526 3.932802 geoper 1 45.71224 8.554909 5.343 0.000 28.94492 62.47955 isxpll I -2008.443 735.7265 -2.730 0.006 -3450.44 -566.4451 isxp2ll I 5875.138 986.1306 5.958 0.000 3942.357 7807.918 elf 1 9.561358 11.84629 0.807 0.420 -13.65695 32.77966 elf2 -.2020015 .1520272 -1.329 0.184 -.4999694 .0959665 elf2rf2 1 .0000146 .0000126 1.157 0.247 -.0000101 .0000394 logpop I -51.11993 59.28777 -0.862 0.389 -167.3218 65.08196 -cons 627.0077 942.0352 0.666 0.506 -1219.347 2473.363 ---------+…___________________________________________________________________ sigma_u 1 725.17089 sigma e 1 403.69156 rho I .76341829 (fraction of variance due to u_i) . predict Ply (option xb assumed; fitted values) (772 missing values generated) . gen ResPly = Ply -rgdplag (772 missing values generated) . xtreg ygll rgdpl2 ygl2 poll2 poll2s geoper isxpll isxp2ll elf elf2 elf2rf2 logpop, re i(id) Random-effects GLS regression Number of obs = 500 Group variable (i) : id Number of groups = 110 R-sq: within = 0.0112 Obs per group: min = 1 28 between = 0.4813 avg = 4.5 overall = 0.1709 max = 5 Random effects ui - Gaussian Wald chi2(11) = 90.23 corr(u_i, X) = 0 (assumed) Prob > chi2 = 0.0000 ygll I Coef. Std. Err. z P>Izl [95% Conf. Interval] …--------+…___________________________________________________________________ rgdpl2 1 -2.29e-06 5.05e-07 -4.535 0.000 -3.28e-06 -1.30e-06 ygl2 I .1764172 .044013 4.008 0.000 .0901533 .2626811 po112 .0005054 .0002028 2.492 0.013 .0001079 .0009029 poll2s I 3.46e-06 .0000456 0.076 0.940 -.000086 .0000929 geoper I .0007822 .0001606 4.869 0.000 .0004674 .0010971 isxpll -.0044191 .0281565 -0.157 0.875 -.0596047 .0507665 isxp2ll I -.0158245 .0419194 -0.377 0.706 -.097985 .066336 elf I .0000426 .0001934 0.220 0.826 -.0003365 .0004217 elf2 -1.88e-06 2.49e-06 -0.756 0.450 -6.76e-06 3.00e-06 elf2rf2 I 2.90e-10 2.09e-10 1.388 0.165 -1.19e-10 6.99e-10 logpop I -.0012297 .0010937 -1.124 0.261 -.0033733 .000914 cons I .026117 .0189044 1.382 0.167 -.0109351 .063169 ---------+-------------------------------------------------__----------------_ sigmau I 0 sigma e I .02425737 rho 1 0 (fraction of variance due to u_i) predict Plg (option xb assumed; fitted values) (772 missing values generated) . gen ResPlg = Plg - ygll (788 missing values generated) xtreg isxp rgdpl2 ygl2 poll2 poll2s geoper isxpll isxp2ll elf elf2 elf2rf2 logpop, re i(id) Random-effects GLS regression Number of obs = 516 Group variable (i) : id Number of groups = 110 R-sq: within = 0.0299 Obs per group: min = 1 between = 0.9539 avg = 4.7 overall = 0.7519 max = 5 Random effects u i - Gaussian Wald chi2(11) - 1457.04 corr(u_i, X) = 0 (assumed) Prob > chi2 = 0.0000 isxp I Coef. Std. Err. z P>Izl [95% Conf. Interval] rgdpl2 1 9.37e-07 1.26e-06 0.747 0.455 -1.52e-06 3.40e-06 ygl2 .0847589 .1084281 0.782 0.434 -.1277562 .297274 poll2 -.0004517 .0004991 -0.905 0.365 -.00143 .0005265 poll2s 1 .0000549 .0001131 0.485 0.627 -.0001668 .0002766 geoper I -.0002895 .0003961 -0.731 0.465 -.0010659 .0004869 isxpll I 1.015063 .0694173 14.623 0.000 .879008 1.151119 isxp2ll -.3494425 .1037953 -3.367 0.001 -.5528775 -.1460074 elf I .0004362 .0004764 0.916 0.360 -.0004974 .0013699 elf2 -6.04e-06 6.15e-06 -0.982 0.326 -.0000181 6.01e-06 elf2rf2 1 5.87e-10 5.15e-10 1.140 0.254 -4.23e-10 1.60e-09 logpop I -.0049042 .0027029 -1.814 0.070 -.0102018 .0003934 cons 1 .0797931 .0467586 1.706 0.088 -.011852 .1714382 ---------+--------------------------------------------------__---------_______ sigma_u I 0 sigma e I .06206757 rho 1 0 (fraction of variance due to u_i) 29 . predict Plx (option xb assumed; fitted values) (772 missing values generated) . gen ResPlx = Plx - isxp (772 missing values generated) . xtreg isxp2 rgdpl2 ygl2 poll2 poll2s geoper isxpll isxp2ll elf elf2 elf2rf-2 logpop, re i(id) Random-effects GLS regression Number of obs = 516 Group variable (i) : id Number of groups = 110 R-sq: within = 0.0125 Obs per group: min = 1 between = 0.9292 avg = 4.7 overall = 0.6149 max= 5 Random effects u_i - Gaussian Wald chi2(11) 783.94 corr(u_i, X) = 0 (assumed) Prob > chi2 = 0.0000 isxp2 I Coef. Std. Err. z P>IZI [95% Conf. Interval] rgdpl2 1 4.56e-07 9.57e-07 0.476 0.634 -1.42e-06 2.33e-06 ygl2 1 .1261093 .0826819 1.525 0.127 -.0359442 .2881628 poll2 1 -.0004413 .0003806 -1.159 0.246 -.0011872 .0003047 poll2s 1.18e-06 .0000863 0.014 0.989 -.0001679 .0001702 geoper I .0000172 .0003021 0.057 0.955 -.0005748 .0006093 isxpll I .2618684 .0529342 4.947 0.000 .1581193 .3656175 isxp2ll .3393045 .0791492 4.287 0.000 .184175 .494434 elf I .0002471 .0003633 0.680 0.496 -.0004648 .0009591 elf2 I -4.Ole-06 4.69e-06 -0.855 0.392 -.0000132 5.18e-06 elf2rf2 1 3.46e-10 3.93e-10 0.879 0.379 -4.25e-10 1.12e-09 logpop I -.0012051 .0020611 -0.585 0.559 -.0052448 .0028346 cons I -.0003371 .0356558 -0.009 0.992 -.0702212 .0695469 ---------+------------------------------------------------__-----------------_ sigma_u 0 sigma_e .04750994 rho I 0 (fraction of variance due to u_i) . predict Plx2 (option xb assumed; fitted values) (772 missing values generated) . gen ResPlx2 = Plx2 - isxp2 (772 missing values generated) 30 References Alberto Alesina, Reza Baquir, William Easterly (1999) "Public Goods and Ethnic Divisions" World Bank Policy research working paper No: 2108. 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