Social Sanctioning and Voter Turnout in Emerging Democracies Danielle F. Jung Emory University danielle.jung@emory.edu James D. Long University of Washington jdlong@u.washington.edu February 25, 2016 Abstract Why do citizens in emerging democracies turn out and vote? Particularly given voting is costly and individuals do not prove pivotal to outcomes. Work has previously focused on two key explanations for voter mobilization: 1) access additional individual material benefits such as vote-buying through patronage, 2) a sense of duty and attachment to their ethnic group or political party. We find that in addition to these explanations there is a third: voters may mobilize to avoid negative social sanctions from other community members for not voting. Favoring the third explanation, we argue that voting can be understood as an individual investment in collective goods and therefore community members must cooperate and coordinate to vote and field electoral winners. We test our theory using original data from a survey we conducted after the 2010 Wolesi Jirga parliamentary elections in Afghanistan. We find the avoidance of negative pay-offs from social sanctioning drives mobilization, while strength of ethnic attachments have no impact on turnout. Vote buying is only a positive predictor of voting amongst voters who do not trust their neighbors. Acknowledgments We acknowledge generous funding from Democracy International (DI) to complete the survey, as well as support from DI staff including Glenn Cowan, Eric Bjornlund, Alessandro Parziale, Jed Ober, John Gatto, and Jeremy Wagstaff. Mohammad Isaqzadeh and Shahim Kabuli provided invaluable research assistance. We thank Eli Berman, Karen Ferree, Clark Gibson, Adam Glynn, David Lake, and Jake Shapiro for comments. Jung acknowledges support from ESOC. All errors remain with the authors. Wordcount: 8988 On September 18, 2010, roughly 5.6 million Afghans turned out to vote for members to the Wolesi Jirga, only the second parliamentary and fourth national election since the overthrow of the Taliban in 2001.1 Afghanistan holds limited experience with democratic institutions, lacks established political parties, and suffers high levels of underdevelopment. Voters went to the polls despite a history of violent election days and increasing attacks by insurgents during the campaign period.2 Given these enormous challenges, why did many Afghans vote? The extent and motivations of voter turnout have long bewildered social scientists. According to rational choice approaches, the costs associated with voting are sufficiently large and the probability any one vote proves decisive sufficiently small that a pure cost-benefit analysis should yield few, if any, voters (Downs 1957, Riker and Ordeshook 1968). Yet citizens frequently turn out to vote (Cox 1997, Mackie 2003, Morton 1991, Nickerson 2005), and in emerging democracies at a rate that is sometimes higher than consolidated democracies (Blaise 2000, Kasara and Suryanarayan 2015, Kostadinova and Power 2007). To explain these patterns, scholars offer amendments to cost-benefit calculations, examining both psychic and material pay-offs including individuals’ desire to adhere to social norms (Gerber, Green and Larimer 2008, Huckfeldt and Sprague 1995, Sinclair 2012), feelings of “duty” towards democratic principles (Downs 1957, Riker and Ordeshook 1968), or affective ties of membership to political parties or ethnic groups (Dickson and Scheve 2006, Horowitz 1985, Uhlaner 1986). Direct contact with political agents like parties or canvassers may provide voters information encouraging participation (Gerber, Green and Green 2003, Gerber and Green 2000, Gerber, Green and Larimer 2008, Green and Gerber 2004, Green, Gerber and Nickerson 2003) or gifts like money or food in exchange for support (Kitschelt and Wilkinson 2007, Kramon 2013, 1 Source: IEC certified results. Afghanistan held presidential elections in 2004, 2009, and 2014; parliamentary elections in 2005 and 2010. 2 Over 500 violent incidents occurred on election day in 2009 (Weidmann and Callen 2012). 1 Posner 2005, Stokes 2005, Wantchekon 2003). Mapping these insights to motivations for political behavior in transitioning societies like Afghanistan proves particularly difficult, however. On the one hand, citizens emerging from non-democratic regimes may not yet express significant support for, or understanding of, the role of the vote and the institutions for which they are selecting. Political parties could face numerous challenges mobilizing voters given a lack of experience and resources. The threat of violence from incumbents or insurgents may deter individuals who believe they could be targeted. These factors suggest low levels of participation. On the other hand, the strength of ethnic or religious groups that pre-date democracy could serve as important coordinating mechanisms that political actors exploit to drive turnout. Citizens in new democracies—most of them poor— could be susceptible to forms of vote-buying, offsetting costs of voting. These realities indicate high potential for mobilization. We take a new approach to adjudicate these plausible, but often divergent, predictions regarding levels and motivations for turnout in transitioning democracies. Our point of departure analogizes voting to a prisoner’s dilemma where individuals vote to make personal investments in collective goods (Popkin 1994), whose provision they delegate to leaders at the ballot box (Powell 2000). Voting therefore forms a classic collective action problem: individuals will enjoy the benefits of the shared goods that elected politicians provide regardless of whether they pay the individual cost of participation. Citizens in a democracy must therefore cooperate and maintain a level of turnout that helps support their community’s interests. To solve this problem, we study the population dynamics of communities in Afghanistan and first argue that features of communities and the electoral environment in emerging democracies increase the likelihood that individuals turn up to the polls. Citizens in poor countries live in highly vulnerable settings, often lacking basic services and suffering perilous security and economic conditions. While communities frequently rely on self-help for survival, the selection of leaders to democratic institutions provides another important potential avenue for improving welfare where government bodies, like 2 parliament, are tasked with the provision of needed services. However, communities must solve cooperation problems and have their members mobilize to the polls to create a democratic mandate by expressing these demands to elected leaders. We therefore argue there are strong social pressures among community members to vote. We think fear of exposure as a violator of community norms induces many individuals to behave in ways they normally would not; for example, voting when they might otherwise stay home, given the (high) costs to turn out. To enforce the norm to vote and punish defectors, community members require the ability to monitor individual behavior. We further argue that the electoral environment in emerging democracies provides a number of mechanisms for monitoring because voting remains a highly visible act. In these settings, voters easily observe who turns out. Communities are clustered tightly around the schools, community centers, or houses of worship (like mosques) that serve as polling stations and village focal points.3 Voting often requires long queuing and community members can see many of those who vote. Afghan voters’ fingers are marked with indelible purple ink identifying them as having voted on election day and for many days after. Because voting is so visible, community members can pressure people to vote and identify defectors if they do not. We hypothesize that the fear of sanctioning, driven by community expectations to vote and the visibility of the act motivates voters to turn out, helps solve the community’s collective action problem and drives turnout. Second, we argue that features of the underlying social structure in communities can either strengthen or attenuate the degree to which community members are likely to cooperate to vote. Specifically, a community’s level of social capital, measured by trust between community members, shapes the degree to which coordination is made easier or harder. We hypothesize that communities with higher levels of social capital need fewer inducements to punish defectors and therefore produce greater turnout. Conversely, communities with lower levels of social capital have a harder time coordinating 3 In Kabul province, for example, the average geographic area covered by a polling station is 0.2 square miles. 3 and therefore require more social sanctioning to encourage turnout. We test our predictions with data from an original survey that we conducted in all regions of Afghanistan after the 2010 Wolesi Jirga elections. To preview results, individuals’ perceptions of social sanctioning played an important role in determining turnout. Neither strong ethnic ties nor expectations of vote-buying consistently explain participation. Violence decreased the likelihood of turnout, but not consistently. In a sign that democratic institutions might be taking root in Afghanistan, we find that respondents who viewed the Wolesi Jirga as an important institution and one that provides services are more likely to vote, supporting our intuition that citizens vote to support collective goods. We also find the effect of social sanctioning is strongest in areas of lower social capital, whereas it is weaker in areas with higher levels of social capital. Our findings suggest that while there are several important motivations towards understanding why citizens vote in new democracies, social sanctioning and levels of social capital prove critical. We believe our results contribute comparative insights to three literatures. First, we tackle a long-running puzzle and add to prior studies on the drivers of turnout by studying a setting, Afghanistan, where citizens pay perhaps some of the highest costs in the world to vote, yet millions still participate. We depart from standard accounts from emerging democracies that focus on ethnicity and vote-buying. Instead, we extend insights on the role of social pressure from studies of American voting (Gerber, Green and Larimer 2008, Huckfeldt and Sprague 1995, Sinclair 2012), but we locate the source of the norm for voting as a solution to local collective action and account for the mechanism that allows community members to monitor voters, reflecting the real electoral environment in countries like Afghanistan.4 While Afghanistan is a distinct case in many ways, our focus on the population dynamics of local communities and how these interact with formal institutions broadly reflects many poor and transition4 Gerber, Green and Larimer (2008) ground the enforcement of a social norm for voting as an extrinsic motivation for voters, but do not say where this norm comes from, why societies would enforce it, and it only weakly increases turnout in their study. Moreover, their experimental advertisement of possible social sanctioning does not seem to reflect real mechanisms to monitor and sanction voters in the American system. 4 ing societies that must overcome local collective action problems to express demands to the government to receive services.5 Second, we join emergent studies in the social sciences that generate general predictions about the potential for endogenous solutions to cooperative dilemmas (Berman 2011, Jung and Lake 2011, Shapiro 2012), testing these predictions with observational data. Last, we contribute to a growing empirical literature about the opportunities and challenges political actors, policymakers, and citizens face with contemporary efforts at democratization and development in countries threatened by non-state insurgents (Albertus and Kaplan 2012, Beath, Christia and Enikolopov 2013, Berman et al. 2013, Blair, Imai and Lyall 2014, Callen et al. forthcoming, Daly 2014, Steele 2011). 1 Voter Turnout in Emerging Democracies Classical rational choice approaches to voting in consolidated democracies arrive at the theoretical prediction that given the costs associated with voting and the nearzero probability that any one vote decides an election, a pure cost-benefit analysis ought to produce few if any individuals that turn out. Yet citizens frequently vote. In order to understand the gulf between prediction and reality, scholars argue that participation is driven by an innate or psychic “duty” towards democratic principles (Downs 1957, Riker and Ordeshook 1968) or adherence to social norms (Gerber, Green and Larimer 2008, Huckfeldt and Sprague 1995, Sinclair 2012). Voters may receive information and messaging encouraging participation from direct contact with parties or canvassers mobilizing “get-out-the-vote” efforts (Gerber, Green and Green 2003, Gerber and Green 2000, Gerber, Green and Larimer 2008, Green and Gerber 2004, Green, Gerber and Nickerson 2003).6 5 Empirical replication in Ghana and Kenya generates similar results presented here (citation redacted). Approaches that focus on additional motivations can be modeled as parameters entering an individual’s utility function, following Riker and Ordeshook (1968). Specifically, p is the probability that a voter’s ballot is decisive and B is the difference in utility from candidates’ positions or characteristics, D is the duty one feels, and C is the cost of voting. 6 pB + D > C 5 These insights from industrialized democracies provide analogs to transitioning societies, but do not produce a consistent set of predictions on turnout. Citizens in new democracies could feel a strong duty to vote despite (or even because of) the newness of democratic institutions (Bratton, Mattes and Gyimah-Boadi 2005), or unfamiliarity or experiences with institutions like a parliament could suggest disengagement and a lack of norms encouraging participation. The strength of attachment to one’s ethnic group could form a duty to vote to express social identity. In the divided societies of much of the democratizing world, ethnic groups have histories of relationships before the transition to democracy, which may include conflict and civil war. Citizens may vote to articulate their identity and demonstrate allegiance to co-ethnics (Dickson and Scheve 2006, Horowitz 1985). Ethnic attachments may overlap with feelings of partisanship in countries where party identification and ethnicity strongly correlate Chandra (2004).7 Contact from political actors may also encourage electoral participation, although along different dimensions from consolidated democracies. In new democracies, inchoate political parties and candidates frequently lack the organizational strength and/or experience to mobilize voters through traditional get-out-the-vote efforts (Bratton and Kimenyi 2008). Therefore, political actors may resort to more targeted strategies to identify and mobilize supporters, including individual material incentives in the form of vote-buying and patronage (Kitschelt and Wilkinson 2007, Kramon 2013, Posner 2005, Stokes 2005, Wantchekon 2003),8 off-setting the costs of voting. Given resource constraints among the electorate in poor and under-developed democracies, With a low value of p and constant B, an individual is likely to vote when their feelings of duty are higher than costs. Gerber, Green, and Larimer 2008 add to this by dividing the D term and allowing for “intrinsic” (i.e., psychic) and “extrinsic” (i.e., material) elements: D = U (DI , DE ) Where D equals the utility of intrinsic DI and extrinsic DE . The value of D, and therefore the likelihood of voting, can increase with increases in either intrinsic or extrinsic motivations. 7 President Hamid Karzai had issued a decree to make political parties illegal in Afghanistan, and therefore we focus on ethnic, rather than party, attachments. 8 Much of the literature from emerging democracies argues that vote-buying and patronage occur along partisan or ethnic lines. The attraction towards parties or ethnic groups from expectations of material incentives is analytically distinct from affective ties of membership. Therefore, while psychic and material pay-offs can produce the same observable implication (voting), we treat these as distinct mechanisms. 6 voters could be particularly susceptible to this form of influence.9 We agree that psychic and material incentives in the form of ethnic attachments and vote-buying could play important roles in elections in emerging democracies. However, we argue these factors on their own do not produce precise or consistent predictions for turnout. Despite the relevance of ethnicity to numerous political processes in developing democracies, citizens’ actual expressed degree of ethnic attachments are significantly below observed turnout levels.10 While an individual’s receipt of money or goods in exchange for a vote plausibly shifts the cost-benefit calculus of voting,11 the amount of payments and the number of voters candidates would need to reach would be unreasonably high to obtain levels of participation observed in countries like Afghanistan. With poorly organized parties that lack mobilizing capacities, it seems extremely unlikely that every voter, or even most voters, receives or expects to receive gifts or money in exchange for their vote. Additionally, contingent strategies like votebuying like work when politicians can monitor whether and how a person voted.12 On top of barriers to party organization, a secret ballot makes it very hard for politicians to confirm whether a person has indeed cast a ballot in their favor (Ferree and Long nd). While violations of the secret ballot can occur, by and large voters’ privacy is maintained, including in Afghanistan where voters cast ballots behind cardboard screens (Democracy International 2010).13 Therefore, we think the costs of payments and bar9 Relatedly, other studies look at the correlation between socio-economic characteristics of citizens in poor democracies and their propensity to vote (Bratton, Mattes and Gyimah-Boadi 2005, Kasara and Suryanarayan 2015). 10 For example, Robinson (2014) uses Afrobarometer data from 16 countries and finds that only about 16 percent of respondents (N=22,115) identify with their ethnicity more than their citizenship. Bratton and Kimenyi’s (2008) pre-election survey for Kenya’s 2007 election finds 20 percent of respondents identify themselves ethnically, echoing results from Horowitz and Long (N.d.) and Long (2012). The election had 70 percent turnout. Assuming all of the roughly 20 percent of ethnic identifiers in Kenya voted, that leaves a 50 percentage point gap between strong ethnic identifiers and actual turnout. 11 This could substantially reduce C or reflect a net benefit rather than positive cost, or be modeled as DE . 12 Rueda (2016) suggests small polling station size makes it more likely for well-organized brokers to monitor vote-buying, but Afghanistan lacked political parties in this election and candidates could not consistently place agents at most polling stations to monitor the voting and count processes. 13 In Ghana, exit poll data shows that only 17 percent of voters report secret ballot violations, close to the average rate reported across Africa in the Afrobarometer (Ferree and Long nd). In our pre-election survey from Afghanistan, 66 percent of respondents reported they believed their ballot to be secret, 24 percent not secret, and 11 percent did not know. However, of the people who said not secret, only 38 percent of those 7 riers to monitoring suggest that vote-buying alone does not fully explain variation in turnout. Violence may also shape voter behavior. While not all emerging democracies have violent elections or ongoing insurgency, many developing countries emerge from conflict where elections stoke fears of renewed violence (Ishiyama 2014). Violence should depress turnout if voters fear negative repercussions from participation (Collier and Vicente 2012, Condra et al. nd), especially since prior exposure with violence affects how individuals calculate risk and influences behavior (Callen et al. 2014).14 Yet some studies find prior exposure may to violence may increase forms of political participation (Bellows and Miguel 2009, Blattman 2009). Our approach To address imprecise and countervailing predictions on turnout in emerging democracies, we adopt a new approach to understanding voter mobilization that we believe builds on and expands prior approaches, and better accounts for the levels and motivations of turnout. In this theory section, we explore the importance of social sanctioning within communities to overcome the collective action problem of voting, and we account for predictions of alternative explanations.15 We depart from prior studies that explicitly or implicitly analogize turnout as a utility maximization problem for individuals. Instead, we analogize voting as a prisoner’s dilemma where individuals vote to make personal investments in collective goods (Popkin 1994),16 whose provision they delegate to leaders at the ballot box (Powell 2000). cited a candidate or political agent as the source of the violation, others were more likely to mention family members. 14 Driscoll and Hidalgo (2014) report that a civic education campaign in Georgia may have suppressed turnout among opposition supporters. They speculate voters interpreted the campaign as evidence of increased political attention from the regime. 15 We derive our predictions on the levels and motivations of turnout formally from an Agent-Based Model (ABM). These predictions are generally intuitive. For a full account of the model, we refer readers to the online description. 16 Analogizing voting as a problem of an individual’s utility maximization focusing on cost-benefit analysis suggests that the parameters increasing the likelihood of turnout, like D or DI and DE , are act and not outcome-contingent: an individual would receive the positive pay-off, whether intrinsic or extrinsic, by voting 8 Voting therefore produces a collective action problem: individuals will enjoy the benefits of the shared goods that elected politicians provide regardless of whether they pay the individual cost of voting.17 Citizens must therefore cooperate and maintain a level of turnout that helps support their community’s interests and overcome the coordination problem. Patterns of cooperation and coordination within a population faced with prisoner’s dilemma-ordered payoffs is therefore analogous to aggregate voter turnout because individuals have incentives to free-ride. Table 1 depicts the problem faced by voters according to our framework. We examine strategies and pay-offs at both the community and individual levels in Table 1 to help frame what drives cooperation. A community has two potential voters, V1 and V2 . Let us first assume neither player turns out, defecting with the action “Stay Home.” The pay-offs at the community level are negative: there is no community investment in goods since no one voted to delegate provision to an elected leader. Without representation and the mandate that comes with high turnout, the community receives nothing from this level of government.18 Individually, V1 and V2 do not receive any of the psychic or material benefits that they could gain from voting, they potentially experience social sanctioning from not voting (we define and examine social sanctioning below), yet they do not pay any costs (such as losing time or wages, or experiencing regardless of the outcome and regardless of whether anyone else voted. We analogize voting as an individual investment in collective goods to explain cooperation to overcome the collective action problem inherent in turnout. Our approach suggests that part of an individual’s decision to vote is formed by one’s expectations of others and shows why individual utility maximization through psychic and material benefits does not predict turnout on its own (although those pay-offs certainly enter a voter’s calculus). 17 In later work, Green and Gerber (2010) refer to adherence to social norms to vote as a side-payment to solve a collective action problem, but do not explain why voting is a collective action problem or why communities develop norms to vote. 18 This outcome does not mean that communities necessarily lack services overall— in this stylized setup, we examine voting for a representative as the means to receive services in this particular election (Afghanistan’s parliamentary race). Were no Afghans to vote and therefore seat no parliamentarians, communities could potentially receive services from other levels of government. The theoretical counterfactual motivating individuals to vote as investments in collective goods is not necessarily a lack of overall services, but rather exclusion from the budgetary and policy-making powers of the representative in a given election. Afghanistan’s electoral rules make the importance of community voting and representation salient: each province serves as a multi-member district with relatively large magnitude, but winning candidates typically only garner votes from specific locales where they can rely on strong support (Callen and Long 2015). Therefore, communities who did not cooperate and elect a member would lack representation in parliament relative to those who had. 9 Table 1: Turnout as a Cooperation Problem (Prisoners Dilemma) Voter 2 Stay Home Voter 1 Turnout Turnout Stay home Community outcome Higher investment Community outcome Middling investment Individual outcomes Individual outcomes V1 & V2 : Benefits: Psychic benefits, potential social benefits, material benefits Costs: A day’s wage, risk of violence V1 : Benefits: Access community benefits, psychic benefits, material benefits Costs: A day’s wage, risk of violence V2 : Benefits: Access community benefits, keep day’s wages, no risk of violence Costs: no psychic or material benefits, potential social sanctioning Community outcome Middling investment Community outcome No investment Individual outcomes Individual outcomes V1 : Benefits: Access community benefits, keep day’s wages, no risk of violence Costs: A day’s wage, risk of violence V1 & V2 : Benefits: No lost work or time, no violence Costs: no psychic or material benefits V2 : Benefits: Access community benefits, psychic benefits, material benefits Costs: A day’s wage, risk of violence violence). Now we examine what happens if V1 and V2 both cooperate and “Turnout” (upper left cell).19 The pay-offs for the community include higher investment, equivalent to 19 Our logic here reflects the belief that increasing voter turnout should increase the likelihood that representatives pursue policies in line with the preferences of the median voter, creating more (but not perfect) pareto-efficient distribution relative to lower voter turnout with skewed ideal points and provision. 10 the community doing as well as it can in terms of receiving collective goods from representatives given delegation through voting. Both players also receive individual positive pay-offs including psychic and material rewards, they avoid any negative social sanctioning, but they pay costs in terms of time and wages, and potentially experiencing violence. Last, we view the result if one player cooperates, “Turnout,” while another defects, “Stay Home,” indicated in the upper right and lower left cells. At the community level in either scenario, there is middling investment,20 compared to higher investment when they both turn out or no investment if they both stay home. If one player takes the suckers pay-offs and turns up, they receive psychic and material rewards, avoid social sanctioning, and avoid costs but risks violence. The player who does not show up does not receive additional benefits, potentially receives social sanctioning, but does not pay costs or risk violence. Table 1 shows that regardless of the benefits or costs that may accrue to a citizen from voting, the motivations for turning out also include how electoral outcomes affect the provision of goods to the community in which individuals live. We recognize that who and what constitute these environments are highly contextual and undoubtedly vary across countries, within countries, and over time. However, since democratic lawmakers legislate on the basis of groups or locales and not (solely) individuals, electoral outcomes affect collectives. Voters therefore face a constant problem of cooperation in order to ensure that their group or area successfully fields electoral winners. Higher turnout demonstrates more active participation in creating a democratic mandate relative to lower turnout. Therefore, we think of voting as both act and outcome contingent. On the one hand, we focus on explaining the act of voting, rather than the victory of any particular candidate. Our theoretical interest in turnout is driven by understanding the 20 Similar to fn 18, we argue that even if some community members vote, but turnout is lower than if more individuals coordinated, the likelihood that the community yields a local candidate to parliament and that the preferences of the median voter are communicated to politicians declines relative to situations in which there is higher turnout and therefore community investment. 11 puzzle inherent in the collective action problem of why citizens pay the individual costs of voting even if their vote is unlikely to affect the outcome, and any outcome is shared among community members, whether they voted or not. Therefore, solving the puzzle requires explaining an act-contingent behavior. Second, for whom a person votes is much less visible (if at all) than whether a person votes. The strategies community members employ to observe a person’s candidate selection therefore requires a separate line of empirical work that we do not investigate here. However, our assumption driving our analogy for voting—an individual investment in collective goods—necessarily requires that voters care about electoral results and whether winning candidates will distribute goods to reflect the preferences of those who voted. While we remain agnostic about the particular identity of electoral winners, we argue that greater turnout among members of a community should increase the likelihood of distribution of goods to the community ceteris paribus, compared to lower turnout. Explaining Turnout Next, we explore the logic behind how communities overcome collective action problems and mobilize individuals to cooperate to vote. Critically, we focus on why and how community members work towards a cooperative equilibrium when both V1 and V2 turn out, and the desire of both players to avoid the negative costs of social sanctioning if they defect and stay home. We first argue that features of communities and the electoral environment in emerging democracies increase the likelihood that individuals turn out. While political parties may be weak in developing democracies, communities and social networks are often strong (Migdal 1988). In states like Afghanistan, citizens frequently lack services and survival proves perilous. People depend on their community for basic needs like security, food, and shelter. Therefore, violating community norms and ostracization by the community entails enormous costs.21 This could include exclusion from social in21 This dynamic also occurs within ethnic groups (Fearon and Laitin 1996) and religious communities (Berman 2011). 12 stitutions (mosques), services managed by communities (common-pool resources), and schools; or denial of service by a shopkeeper or shunning from a neighbor. We are agnostic about the precise form of sanction or the rate at which punishment is rendered (or by whom). Indeed, it likely varies by individual sanctioner and sanctionee as well as context, and need not be a coordinated effort by the community as a whole, but rather could operate between two individuals. We think the simple fear of exposure as a violator of community norms induces people to behave in ways they otherwise would not, for example voting. Though communities frequently must rely on self-help and governments face challenges to provide needed services, citizens still use democratic institutions like elections to voice their demand for goods in developing democracies. Electing members to parliament should increase the likelihood the citizens receive goods and policies within the purview of that parliament and their local representative.22 But communities must solve cooperation problems and turn out to vote to delegate and make these demands of elected leaders. We therefore argue that there are strong social pressures to vote in states like Afghanistan and violating community norms entails costs. Even in light of these strong social pressures, what mechanism drives turnout and how do communities guarantee (high levels of) cooperation? Community members require the ability to monitor individual behavior to enforce norms and punish defectors. Because voting remains a highly visible act, we argue that the electoral environment in emerging democracies provides monitoring capacity. In most emerging democracies, voters can observe who turns up because communities are tightly clustered around schools, community centers, or houses of worship that serve as polling stations and village focal points. Voting is logistically difficult and frequently requires long queuing. Polling stations host on average a few hundred voters, many of whom are visible to other voters and community members as they turn out.23 Even more so than in 22 Despite its youth, many Afghans view parliament as an important government institution. In our survey (described below), 77 percent of Afghans believe the Wolesi Jirga is very important to improving their life and 55 percent believe the opportunity to vote for parliament improves the services in their neighborhood. 23 In Afghanistan, we calculate an average of 1000 voters per polling station, and fewer than 500 voters per polling stream. 13 consolidated democracies, in emerging democracies, community members can see who votes.24 Moreover, Afghan voters’ fingers are marked with purple indelible ink to show that they voted. Electoral ink, which can last up to a week, is a feature of election administration in many poor countries to prevent fraudulent double-voting (Ferree et al. Nd). But ink also allows voters to identify themselves on election day and for many days after. Because voting is visible, community members can monitor and pressure people to vote and identify defectors to sanction if they do not, days after the election itself.25 Second, we argue that features of the underlying social structure in communities strengthen or attenuate the degree to which community members are more likely to cooperate to vote or to defect. We contend that a community’s level of social capital, measured by trust between community members, shapes the extent of coordination.26 In areas with higher social capital where people trust each other more, community members are more cooperative and therefore require sanctioning less. Despite the fact that many Afghans typically live and vote in communities with neighbors who come from similar socio-economic and ethnic backgrounds, decades of internecine conflict have plausibly broken social bonds in some areas and/or strengthened them in others. We argue that communities with higher levels of social capital need fewer inducements to punish defectors (Fearon and Laitin 1996), and therefore have greater turnout. Conversely, communities with lower levels of social capital have a harder time coordinating and therefore require more social sanctioning to encourage turnout. 24 XX percent of Afghans on our survey report that they perceive community members know whether they voted or not. 25 The inking of fingers is an iconic image of elections in Afghanistan and Iraq, demonstrated by many members of the American Congress displaying purple fingers during George Bush’s 2005 State of the Union address. Inking fingers is common in many consolidating democracies, including Iraq (Al-Jazeera N.d.), Egypt (Serwer 2014), and India (BBC 2009). The Taliban explicitly threatened to cut off the fingers of anyone who had ink, a strategy they reprised during the 2014 elections. 26 In the developing world, scholars note a robust relationship between social capital and trust (Fafchamps 2004). 14 Hypotheses We now offer testable predictions derived from our theoretical framework regarding the effects of social sanctioning and social capital on turnout. Our approach allows us to derive predictions about alternative explanations, including the psychic and material pay-offs from Table 1. From the literature, we specify these as feelings of strong ethnic attachment (psychic) and vote-buying (material). We conceptualize these effects in terms of predicting overall turnout and also comparing the strength of the mechanisms against each other. We hypothesize that the threats or perception of social sanctions against an individual from other community members drives cooperation (voting). Turnout will increase as penalties for not turning out become increasingly bad. Social sanctioning results in a negative payoff, decreasing the value (and net advantages) of staying home on election day. Within our framework, we think of this as making already negative payoffs from a lack of community investment increasingly negative for the individual. As those penalties become smaller, turnout decreases significantly—leaving only those with a particularly high intrinsic reason to turn out at the polls. The net payoff to such an outcome need only be slightly less than what the voter would otherwise get from not voting to induce dramatic increases in predicted turnout overall. The magnitude of social sanctions (or punishment) therefore need not need be particularly high to have a dramatic effect. H1: As individuals’ perceptions of social sanctioning increases, so does their likelihood of turning out to vote. Because the intuition behind social sanctioning relies on individuals’ beliefs about how their neighbors are likely to behave, we explore the effect of variation in levels of social capital, measured as differential trust in neighbors, on turnout. We believe the strength of social sanctioning varies inversely with community levels of trust. High levels of trust indicate an individual’s belief that others in the community will invest 15 in community public goods, whereas low levels of trust indicate a belief that others in the community will not invest. We predict trust will attenuate the effect of social sanctioning on voting. Following similar logic, voters who do not trust others in their community are more likely to rely on psychic or material pay-offs that offset their individual direct costs to turning out. H2: Higher levels of social capital decrease the strength of social sanctioning on voting. Alternative Explanations Voting to receive psychic benefits from expressing ethnic attachments requires participation alongside of co-ethnics with similarly strong attachments. If voters place a high salience on turning out for reasons of ethnic affinity (independent of the source of that salience), then the benefits to turning out (particularly mutual turnout) decrease as either affective ties or the salience of those ties decrease. Regarding Table 1, we consider this up-weighting or a “bonus” for any individual payoffs for turning out to vote (or down-weighting staying home). H3: As individuals’ ethnic attachment increases, so does their likelihood of turning out to vote. Vote-buying includes a material good provided by a party or candidate to an individual in exchange for turning out. This is equivalent to adding to the individual voter’s expected payoff for voting, or increasing the community (and therefore individual) payoff for high turnout relative to staying home. While vote-buying may change certain individuals’ calculations from “stay home” to “turn out” in circumstances where the difference between the costs and benefits of voting is relatively small, we find that these incentives must be significantly large to overcome the direct and opportunity costs of not voting, and vote-buying must be distributed at very high rates to induce observed 16 turnout levels. H4: As individuals’ perceptions of the importance of vote-buying increase, so does their likelihood of turning out to vote. Our theoretical approach provides important comparative insights towards understanding voting in emerging democracies. Importantly, we differ from standard accounts that focus on the importance of ethnic attachments and vote-buying, although we account for psychic and material pay-offs into our model. Our theory contributes to insights from scholars in American politics that analyze whether individuals’ desires to adhere to social norms drives turnout (Gerber, Green and Larimer 2008, Huckfeldt and Sprague 1995, Sinclair 2012). However, we provide distinct and important extensions to this general argument, applying it to a new setting. First, these studies assume a social norm for voting, but do not say where it comes from or why it is enforced. While such a norm may exist, there is no automatic reason to assume it extends to new democracies where citizens are unfamiliar with democratic institutions and practices.27 We locate the voting norm in developing democracies not within democratic values per se (although those could exist), but rather in the necessity for communities to overcome local collective action problems to mobilize voters to elect leaders to receive services. Second, we provide a mechanism through which monitoring of the vote is possible and likely given the visible nature of voting in Afghanistan and other new democracies. Voting is more private in the US many voters now vote by mail, and the social clustering around polling stations with electoral ink does not have analogs in the American system. Americans may announce their voting status on social media (Bond et al. 2012), but this is a choice and does not map to a person’s local community. The monitoring and sanctioning capacity mentioned in Gerber, Green and Larimer (2008) is fairly artificial and does not reflect features of the electoral environment in the US. 27 Social norms could have pushed voters in Afghanistan away from the ballot box in areas where insurgents exert influence, especially given the Taliban’s threats against voters. 17 This perhaps explains the relatively weak results on the social norm treatment in their study.28 Conversely, our mechanism is inherent to the electoral environment given extremely local polling station placement and inking. Setting After the US invasion and fall of the Taliban in 2001, Coalition forces established a Constitutional Loya Jirga to create democratic institutions in Afghanistan after decades of civil war and Taliban rule. The Loya Jirga placed Hamid Karzai in power as president and created a new parliament (Wolesi Jirga). Afghan voters ratified Karzai in the first presidential elections in 2004, followed by Wolesi Jirga elections in 2005. In 2009, the country held presidential elections, with a disputed result between Karzai and his closest challenger, Dr. Abdullah Abdullah, when Karzai failed to achieve 50 percent +1 of votes to retain office. Abdullah refused to participate in a run-off leaving Karzai in the presidency. In the shadow of this contentious presidential election, Afghans went to the polls in September 2010 to elect members to parliament. Afghanistan has a unique electoral system and electoral rules. The country is divided into 34 provinces from which members of parliament are elected in a multi-member provincial-wide district through a single non-transferable vote (SNTV). Kabul yields the highest seat share (33) and Panjshir the lowest (2). Even though candidates run at large within the province, given a large number of candidates for a large number of seats, candidates typically only receive support from the communities where they come from, where their votes typically obtain from family members and related co-ethnics. This reality underscores the salience of our theoretical concern involving the localism of community action towards voting for leaders that represent community interests. 28 Threatening to reveal turnout status to neighbors results in an 8 percent/percentage point increase in turnout. In our results, while not experimental, we find a much larger average effect of social sanctioning on voting. 18 Data and Methods We test our hypotheses using data from an original survey in Afghanistan that we designed and conducted after the September 2010 Wolesi Jirga elections.29 We fielded the survey directly after the government finished adjudicating electoral disputes and certified winning candidates for parliament. Several challenges affected our ability to draw a sample. Afghanistan has not conducted a recent census and has no voter registry, making any proportional distribution of the sample difficult and based on poor estimates. Security problems related to the ongoing insurgency and other violence made it dangerous to conduct surveys in many districts. Therefore, a nationally-representative survey of Afghanistan was impossible. As a result, we focused enumeration on areas within capital cities across 19 of 34 provinces, in all regions of the country, including all military commands and the capital city Kabul.Within provincial capitals, we used polling centers as primary sampling units and instituted random walk patterns for selection of households and random selection of respondents (yielding a 50 percent female sample). In total, we surveyed 3,048 Afghans in 471 polling center catchment areas in all regions of the country.30 Our sample biases towards more urban and safer areas under government control. While our results are not representative to the country as a whole, they are to the 19 provincial capitals sampled. We note two important and unique elements of our research design critical for hypothesis testing. First, our core theoretical interest regarding people’s perceptions of social sanctioning as a motivation for voting requires individual-level survey data regarding measures of respondents’ beliefs about the likelihood that community members monitor and sanction voting. Second, our sampling procedure enumerated within polling center precinct areas because our theory involves how voters perceive the likely behavior of their neighbors when deciding whether to vote, and therefore provides a more identified effect of social sanctioning with polling centers as focal points, as op29 We join other studies using survey data to understand Afghans’ political and social attitudes (Beath, Christia and Enikolopov 2013, Blair, Imai and Lyall 2014, Condra et al. nd). 30 The IEC gazetted 5548 polling stations; our sample represents 8.5 percent of the total. 19 posed to studies that do not take this into account. Therefore, our survey provides the best, and only, data source capable of testing our hypotheses. Dependent Variable Our dependent variable is whether or not an individual voted. We rely on self-reported voting31 and generate our dependent variable from the question: “Did you turn out and vote in the Wolesi Jirga elections in September 2010?” We code “yes” responses as 1 and “no” as 0. Of our respondents, 67 percent replied that they voted.32 Trying to employ actual turnout figures incurs a number of challenges in Afghanistan. Lacking a recent census and because there is no voter registry linking individual voters to a particular voting station, it is impossible to know within any polling center how many eligible voters could have voted in relation to how many ballots are cast. Additionally, any registry that did exist would likely contain significant errors. We acknowledge opportunities and challenges using self-reported turnout. Our study requires operationalizing turnout at the individual level to examine how perceptions of social sanctioning affect a person’s propensity to vote. Survey data allows for this, whereas administrative turnout data would not allow us to examine motivations at the individual level. However, some respondents may incorrectly report that they had turned out when they had not, creating bias in one direction potentially artificially inflating the number of possible voters. We believe that if this bias exists, it is 31 This method follows standard approaches of voting behavior from industrialized and emerging democracies employing survey-based measures of turnout (e.g., Bratton, Mattes and Gyimah-Boadi (2005), Kasara and Suryanarayan (2015)). To our knowledge, it is administratively impossible to follow Gerber, Green and Larimer (2008)’s method to obtain public records regarding individual-level turnout in Afghanistan, or any other emerging democracy, and would violate most countries’ election guidelines. It is also nearly impossible to directly observe turnout, with two exceptions. Exit polls, or surveys of voters at polling stations after they have voted, allow enumerators to validate a respondent’s inked finger (Ferree and Long nd). The security situation and threats against polling stations prevented us from conducting an exit poll. Second, a household survey directly after election day when enumerators could view ink on a respondent’s finger could verify turnout (Ferree et al. Nd). However, given fears of post-election violence and credible threats against voters with marked fingers by the Taliban, we could not enumerate a survey until the conclusion of the election process after the ink was no longer visible. 32 We note that the reported turnout number in our Afghan survey falls significantly below many of the Afrobarometer surveys. We believe turnout reports from Afghanistan could be more accurate than other countries because there is less social desirability to falsely report turnout given difficulties in voting and the likelihood of violence. 20 orthogonal to our core theoretical measures driving turnout because our question on whether a respondent voted came at the very beginning of the survey, before any of the question that represent our main independent variables or covariates. Therefore, and critically, any bias would not account for the differences between the potential effects of these variables. Moreover, while 67 percent could overestimate the likely national turnout figures from the IEC, we limited our survey to areas that were more urban and safer, making voting easier and less prone to ballot-stuff than rural and more conflictaffected areas of the country. We are also skeptical that social desirability bias inflates reported turnout. In a pre-election survey that we conducted in the month before the election, 76 percent of respondents said they intended to vote. This declines nine points in the post-election follow-up, asking about actual turnout. If social desirability bias drives the result, intended and reported turnout should be the same, with no drop-off between rounds of the survey, which is not the case. Even using official statistics, it is impossible to know the real turnout rate because without a voter registry there is no denominator of total possible voters to calculate a proportion. Nonetheless, we performed a validation check described in Appendix B.1 that provides suggestive evidence that our reported turnout figure does not depart significantly from actual turnout, and accords with other approximations recorded by independent election observers. While we cannot completely exclude the possibility that some respondents misreported their turnout status, we find it unlikely that the true turnout would be dramatically lower in our sampled areas or systematically correlated to our independent variables. Independent Variable To test for the effects of social sanctioning on the propensity to vote, one needs data on the beliefs and expectations of individuals only possibly elicited directly from a survey. According to our theory, social sanctioning requires two components: the perception that other community members believe others should vote and the perception of the ability for the community to monitor voting. We build our independent variable from two questions asking respondents whether or not their neighbors expect them to vote 21 even if undesirable candidates appear on the ballot, and whether they think other members of their community know whether or not they voted. We believe the intersection of these questions highlights both the social context of voting and the visibility of voting in emerging democracies. We asked “In your opinion, do you think your neighbors expect you to vote even if you do not like the candidates?” and “Regardless of whether you actually voted: In your opinion, do your neighbors know if you voted or if you did not vote?” From these questions, we generate the dichotomous variable “Social Sanctioning,” which carries a value of 1 if individuals respond “Yes” to both questions and 0 otherwise. We believe this question forms a proxy for social sanctioning for four critical reasons. First, the question allows us to measure to the extent to which voters build expectations about the behavior of others with whom they will interact (and cooperate with) in order to succeed both individually and collectively. The question asks specifically whether a respondent perceives that others have this expectation of them. If they do not have that perception, then there is not likely sanctioning for defection. Second, the question wording explicitly imposes a negative cost on voting by specifying that the candidates are undesirable. This allows us to investigate an important aspect to understanding the way in which social pressures and sanctioning should drive turnout: the population of “sanctioners” are those people who believe that members of their community should always vote, regardless of the desirability of the candidates. Respondents who answer negatively do not believe that their community members should always vote, or could be voting because they like the candidates, and are therefore not likely to sanction defectors for choosing to stay home given the risks if the slate is undesirable. The goal of the wording is to isolate the conditions under which we believe sanctioning operates: when others expect one to vote (and pay the associated costs in opportunity cost or risk) even if a person does not like the candidates, and that individuals think they know if that person voted or not.33 Third, we ask the question regarding “people in 33 It is important to specify undesirable candidates to minimize the utility gained from closeness of policy positions, or B, in Riker and Ordeshook (1968), where phrasing the question with respect to “candidates you do not like” sets a minimum of utility gained from the difference between an individual’s preferences 22 your neighborhood.” Therefore, our measure probes directly at the social and local act of voting (and follows our sampling procedure of gaining respondents clustered near polling stations)—which is highly visible to community members regardless of the benefits conferred to individually privately. This suggests that people who answer affirmatively to this question are those who are more likely to sanction members of their communities, although we are agnostic as to the precise method of sanction. People who answer negatively are not likely to impose sanctions on defectors. Fourth, our measure includes monitoring capacity by specifying the visibility of voting. Even if people have the perception that others expect them to vote, if there is no monitoring it is unlikely that even in the face of possible sanctioning respondents would vote. We believe our measure provides an important empirical innovation to the study of voting in emerging democracies, and follows from our theory. We recognize that the interaction of responses on expectations from social pressure and visibility is not necessarily a direct measure of sanctioning. We cannot say what the sanction is exactly and sanctions will vary within and between electoral settings. But for our purposes, the more relevant factor is to gain a measure of individuals’ perceptions of possible sanctioning, arising from social pressure and the ability of community members to monitor. We believe the core elements of these features are captured, without imposing restrictions on the implementation of a sanction. We use the term sanctioning for ease of exposition because we believe it captures the potential negative pay-off citizens would receive from their neighbors if they do not vote, but we recognize that this concept is consistent with something just shy of an actual sanction, like social pressure. and those of the candidate. In the formulation: pB + D > C, this effectively reduces B to zero. That then focuses on when D > C, allowing us to impute extrinsic motivations in the D term through D = U (DI , DE ) following Gerber, Green and Larimer (2008). When voters gain a lot of utility from their closeness to a candidate’s position, B increases and offsets the importance of D. Similar to other studies, our approach therefore focuses on the motivations and likelihood of turnout for citizens who would otherwise be the least likely to vote with respect to gaining (or all together lacking) utility from the policy positions of their preferred candidate. 23 Covariates To create a measure for whether affective attachments to one’s ethnic group and the associated psychic benefits drove a duty to vote, we first ask respondents their language/ethnic group, followed by “Let us suppose you had to choose between being an Afghan and being a [insert name of language/ethnic group]. Which of these groups do you feel most strongly attached to?” This question follows similar measures derived from questions on the Afrobarometer survey (Bratton and Kimenyi 2008, Eifert, Miguel and Posner 2010, Robinson 2014). We create the dichotomous variable “Ethnic Attachment” which takes a value of 1 for ethnic identifiers who responded that they felt strongly or mostly attached to their language/ethnic group, and 0 otherwise.34 Measuring the extent of vote-buying in a given election is difficult in a survey because respondents may be unwilling to give truthful responses given negative perceptions of the practice. For that reason, we do not ask Afghans whether they had received patronage directly, but rather whether they thought candidates providing gifts to voters was important: “Thinking about the upcoming elections, candidates may reward their supporters with gifts and money in exchange for support. Do you think it is very important, somewhat important, or not very important that political parties reward their supporters with gifts and money in exchange for support?”35 We create the dichotomous variable “Vote-Buying” to carry a value of 1 responding to positive responses to this question “very important,” and 0 otherwise. This variable captures attitudes and expectations about vote-buying—not its de facto level, better fitting our prediction (contingent strategies like vote-buying only work if voters express that they desire or expect gifts in exchange for voting, a dynamic captured by our question). 34 Measuring the strength of ethnic attachments poses difficulties given that while ethnic identity itself is an easy concept to define, how “close” a person feels towards a group is less clear. However, our question and similar questions are validated against each other by generating similar response frequencies across surveys in the same country, like Kenya where 17-20 percent of respondents identify closely with their ethnic group (Bratton and Kimenyi 2008, Horowitz and Long N.d., Long 2012). In a different survey that experimentally manipulated treatments regarding the degree of ethnic voting, Long (2012) also validates this approach and finds that about 20 percent of Kenyan voters use primarily ethnic cues when choosing candidates for office suggesting strong feelings of ethnic attachment. 35 This question construction follows the Afrobarometer, Ferree and Long (nd) and Kramon (2013). 24 We also phrase the question to read as though positive responses were not socially undesirable. We include controls that may contribute to turnout in the Afghan context. One important factor in emerging democracies that could depress turnout is a lack of knowledge or interest in new institutions. In Afghanistan, while a variety of local councils are common to mediate between local disputants, the Wolesi Jirga as a national institution with elected members did not exist in Afghanistan before its establishment in 2005. We ask: “Now I want you to think about role of the Wolesi Jirga in Afghanistan’s government. Is the Wolesi Jirga very important, somewhat important, somewhat not important, or not at all important in helping to improve life in your neighborhood?” We code the variable “Wolesi Jirga Importance” “very” and “somewhat” important as positive responses as 1, and 0 otherwise. We also probe the perceived link between voting in the Wolesi Jirga elections and the provision of local services asking: “In your opinion, does the opportunity to vote in the Wolesi Jirga elections increase the quality of services in your neighborhood?” We code the variable “Services” 1 if they respond “Yes” and 0 if they respond “No” or “Don’t know.” In the presence of social sanctioning, we highlight that both of these questions link voting to the provision of collective goods. To measure the effects of local violence on a citizen’s calculus of whether or not to vote, we ask: “Have you lived in a neighborhood that has experienced attacks in the last 5 years?” We code the variable “Neighborhood Violence” 1 if they responded “Yes”, and 0 if they responded “No” or “Don’t Know.”36 Given predictions from the literature about what demographic covariates likely correlate with turnout, we include controls for whether a respondent is male, urban/rural residence,37 literacy (proxying education), and access to electricity (proxying income). Given threats made by the Taliban against voters in predominately Pashtun areas, we also include a dummy for 36 We used data on local attacks in the pre-election period, those results are reported in Appendix B.1. We note very little variation in this variable given the necessity of enumerating the survey in mostly urban areas in provincial capitals. So “rural” in our survey really means outside of the direct downtown area, but still within an urban center. 37 25 whether a respondent was Pashtun given that they may have been less likely to vote.38 Results To model the choice to vote, the dependent variable is whether or not the respondent says they voted, corresponding to an individual playing the cooperative “Turn Out” strategy from Table 1. Our theory predicts that perceptions of social sanctioning should increase the likelihood of turning out. Table 2 presents ten probit estimations on the likelihood that a voter will turnout, with marginal effects of coefficients (other variables held at means) and standard errors (in parentheses).We run all models with robust standard errors clustered at the primary sampling unit level, the polling center. In Table 2, models 1-4 test the basic predictions of social sanctioning, ethnic attachments, and vote-buying. Models 5-10 add amendments from Afghanistan to the specification, including the importance and role of the Wolesi Jirga, violence, and other demographic controls. First, our key independent variable Social Sanctioning, is positive, highly significant, and substantively large across all model specifications predicting turnout, giving support to our first hypothesis. In Model 1, a voter who perceives social sanctioning is nearly 26 percentage points more likely to turn out than one who does not. Second, the coefficients for Ethnic Attachment is negative and insignificant across most of the models, and the effects of vote-buying are insignificant across all models and substantively small. The results on the effects of social sanctioning, ethnic attachment, and vote-buying support the predictions from our model that social sanctioning remains an important driver of turnout, whereas the promise of individual pay-offs with psychic and material rewards from ethnic attachments and vote-buying are not. 38 Appendix A reports descriptive statistics for all variables used in analysis. 26 27 Model 1 0.258 (0.02) 0.019 (0.02) Model 2 -0.042 (0.04) Model 3 Model 4 0.259*** (0.02) 0.016 (0.02) -0.072 (0.04) Model 5 0.257 (0.02) 0.016 (0.02) -0.069 (0.04) -0.034 (0.02) (0.02) Model 6 0.242*** (0.02) 0.034 (0.02) -0.06 (0.04) -0.148*** (0.03) Pseudo R2 0.0522 0.0002 0.0003 0.0533 0.054 0.0695 N 3048 3048 3048 3048 3048 3048 Marginal effects of probit regression. Robust standard errors clustered by PSU (polling center) * p<.05, **p<.01, ***p<.001 Pashtun Electricity Literate Urban Male Services Wolesi Jirga Importance Community Violence Ethnic Attachment Vote Buying Social Sanctioning 0.290*** (0.02) 0.079*** (0.02) 0.055* (0.02) 0.124*** (0.02) -0.006 (0.02) -0.115*** (0.03) 0.1692 3048 Model 7 0.206*** (0.02) 0.024 (0.02) 0.007 (0.04) -0.021 (0.02) Table 2: Probit Model on Likelihood of Voting (=1), Marginal effects 0.1224 3048 0.073*** (0.02) 0.011 (0.02) 0.145*** (0.02) 0.026 (0.02) Model 8 0.246*** (0.02) 0.007 (0.02) 0.016 (0.04) -0.045 (0.02) 0.255*** (0.02) 0.1715 3048 Model 9 0.214*** (0.02) 0.007 (0.02) 0.021 (0.04) -0.052* (0.02) 0.145*** (0.02) 0.261*** (0.02) 0.073*** (0.02) 0.03 (0.02) 0.126*** (0.02) 0.015 (0.02) Model 10 0.206*** (0.02) 0.017 (0.02) 0.024 (0.04) -0.024 (0.02) 0.147*** (0.02) 0.250*** (0.02) 0.079*** (0.02) 0.050* (0.02) 0.119*** (0.02) -0.01 (0.02) -0.117*** (0.03) 0.1797 3048 Next, we examine Models 5-10, which introduce variables specific to the Afghan context. Wolesi Jirga is positive and significant across all models where it is included and substantively important. In Model 8, respondents who think the Wolesi Jirga is important for service provision were 26 percentage points more likely to vote than citizens who do not find it important. These results hold with the inclusion of Social Sanctioning, supporting the idea that one of the mechanisms driving perceptions of enforcement could stem from voting as a concern with collective goods. In Model 7, these respondents are 29 percentage points more likely to turnout than those who do not link the Wolesi Jirga with local service provision. We note that these results proxy for people viewing voting as a substantive transaction, in which they vote, delegate to leaders, and potentially receive services in return. This confirms our intuition that investment in institutions works in tandem with social sanctioning. Though statistically significant in only one specification, voters living in neighborhoods that had experienced violence were less likely to vote. We suspect that this might be the case because our question on violence asked about attacks within the last five years.39 This may only serve as a partial proxy for actual violence on or near the election, but it may also reflect mixed results from other studies on whether exposure to violence increases or decreased the propensity to vote. Male and urban voters were more likely to turn out, although their substantive effects are small. As expected, literate voters are significantly more likely to vote, and access to electricity does not have an effect. Pashtun voters were consistently less likely to turnout. This may arise from the credible threats that the Taliban placed on potential voters in predominately Pashtun areas. Our results show that citizens in Afghanistan are driven to vote given social pressures to do so, whereas individual pay-offs and strong ethnic ties are not important factors. Moreover, even with nascent institutions, belief in the importance of the Wolesi Jirga and belief that voting in Wolesi Jirga elections drive turnout; whereas 39 Using data on local (to the polling station) violence, we find the substantive results reported in Table 2 to be identical (See Appendix B.1). 28 fear of violence partially keeps voters at home. The Effects of Social Capital Because much of our intuition regarding social sanctioning relies on individuals’ beliefs about how their neighbors are likely to behave, we explore our second hypothesis on the effect of differential levels of extant social capital—measured by levels of trust of one’s neighbors—on turnout. We conduct a similar analysis as above, but separate the sample into individuals who trust their neighbors, and individuals who do not. We asked “How much do you trust your neighbors?” Voters who respond “Very much” or “somewhat” were coded as trusting. Because “trusting” and “non-trusting” people are likely playing the game in difference kinds of communities that vary in terms of social capital, we split the sample into one comprised of only trusting individuals (“trust sample”), and the corresponding non-trusting sample because we want to measure the differential effects of moving from a trusting context to an untrusting context to examine whether the effect of social sanctioning strengthens or attenuates based on the level of social capital. 29 Table 3: Community Trust on the Likelihood of Voting (=1) Model 3 Model 4 Model 5 0.316*** 0.198*** 0.152*** (0.04) (0.02) (0.02) Vote Buying 0.069 -0.028 -0.023 (0.04) (0.03) (0.03) Ethnic Attachment -0.014 -0.04 0.011 (0.07) (0.05) (0.05) Community Violence -0.062 -0.013 (0.04) (0.03) WJ Importance 0.120** 0.161*** (0.04) (0.03) Services 0.279*** 0.247*** (0.03) (0.02) Male 0.124*** (0.04) Urban 0.064 (0.04) Literate 0.095** (0.04) Electricity 0.052 (0.04) Pashtun -0.139*** (0.04) Trust Sample? No No No Yes Yes Pseudo R2 0.082 0.1707 0.2077 0.0379 0.1314 N 1111 1111 1111 1937 1937 Marginal effects of probit regression. Robust standard errors clustered by PSU (polling * p<.05, **p<.01, ***p<.001 Social Sanctioning Model 1 0.355*** (0.03) 0.088* (0.04) -0.096 (0.07) Model 2 0.325*** (0.03) 0.053 (0.04) -0.053 (0.07) -0.087* (0.04) 0.125** (0.04) 0.294*** (0.03) Model 6 0.151*** (0.02) -0.014 (0.03) 0.043 (0.04) 0.002 (0.03) 0.156*** (0.03) 0.229*** (0.03) 0.044 (0.02) 0.037 (0.03) 0.132*** (0.02) -0.043 (0.02) -0.086** (0.03) Yes 0.1581 1937 center) Table 3 reports probit regression results on the same dependent variable as Table 2, reporting marginal effects. Models 1-4 include the non-trusting sample, while we run Models 5-8 on the trusting sample. Similar to the full sample from Table 2, across all models, Social Sanctioning is a significant, positive predictor of voting. We see that the effect of social sanctioning is larger in the non-trusting sample than in the trusting sample, suggesting the visibility of the act of voting is important when trust is low. This finding supports Hypothesis 2: Higher levels of social capital decrease the strength of social sanctioning on voting. We note that the results reported in Table 3 also encompass a signaling story in which voters want others in their community to know they are a type that contributes to community goods provision. 30 Figure 1 reports predicted probabilities on the likelihood of voting, first for the full sample (table 2, model 10), then for the non-trusting subsample (table 3, model 3), and finally the trusting subsample (table 3, model 6), holding other variables at the mean.40 Figure 1: Predicted Probability of Voting In Table 3, Ethnic Attachment remains an insignificant predictor. We note two additional interesting differences between the trusting and non-trusting samples. First, Vote-Buying, which we previously found was not indicative of a higher likelihood of voting, is a significant, positive predictor of voting, but only within the subset of voters who respond that they do not trust their neighbors. Among voters who do trust their neighbors, patronage does not increase the likelihood of voting. This finding suggests that, in addition to social sanctioning, in neighborhoods where trust is particularly low, vote-buying may be an effective form of mobilization. This finding also suggests that there are potentially shorter time horizons in non-trusting neighborhoods, where more immediate, private, although likely smaller, benefits are important; and/or that 40 We note that holding all variables at their means is likely an unrealistic assumption. Predicted probabilities of logistic regressions with identical specifications. 31 selective incentives are more rampant, and perhaps necessary, in areas with lower levels of social capital. Discussion and Conclusion Why do citizens in emerging democracies like Afghanistan vote? In this paper, we test the proposition that the core calculus of voting involves an individual investment in collective goods. For the collective investment analogy to be true and voting understood to produce positive social benefits, it must also incur negative social costs in case of defection. We discover this through our exploration of the importance of social sanctioning, an effect we are able to measure empirically with robust survey data. Our findings show that individual motivations, including selective incentives conveyed through strength of ethnic attachments and vote-buying, do not consistently predict mobilization. By and large, voting is a social act where individuals monitor and sanction one another to produce better services for the community. These effects grow stronger in communities that lack social capital. Theoretically, we emphasize the leverage gained in approaching turnout as a social phenomenon, across a population, rather than a purely individual one. Although individuals decide to turn out or not according to their personal expected utility, they do so within a population situated in a specific institutional and social environment. Population dynamics can, and do, affect the core cooperation problem, and not necessarily in an intuitive way. Individuals who might be predisposed to stay home on election day may change their behavior as a result of these dynamics. Empirically, our findings contribute to debates regarding mobilization and turnout in important ways. First, we add to the general understanding of the anomaly of voting, including within settings where democratic institutions and practices are new. We see similar trends in Ghana and Kenya (citation redacted), lending credence to our belief that the theoretical and empirical insights gained here should apply across a host of multi-ethnic and emerging democracies, including those with an active insurgency 32 that threatens nascent democratic institutions, like Afghanistan. We also provide important results for policy-makers and demonstrate the relative salience of various motivations that may drive voters to the polls in new democracies beyond social sanctioning. Our results show that despite inchoate democratic institutions and contested legitimacy between insurgents, ethnic leaders, and the state, many Afghans think the Wolesi Jirga is an important institution to their lives and are willing to participate in democratic processes like elections. 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Weidmann, Nils B. and Michael Callen. 2012. “Violence and Election Fraud: Evidence from Afghanistan.” British Journal of Political Science (July 2012):1–23. 39 Appendices A Descriptives Variable Turnout Social Sanctioning Vote Buying Ethnic Attachment Community Violence Wolesi Jirga Important Services Male Urban Literate Electricity Pashtun Trust Sample (=1) N Mean SD 3048 3048 3048 3048 3048 3048 3048 3048 3048 3048 3048 3048 3048 0.669 0.279 0.246 0.056 0.261 0.776 0.555 0.500 0.495 0.653 0.603 0.325 0.635 0.471 0.449 0.431 0.230 0.439 0.417 0.497 0.500 0.500 0.476 0.489 0.469 0.481 Table A-1: Summary Statistics 40 Province IEC official vote count Open Streams Badakhshan Badghis Baghlan Balkh Bamyan Daikondi Farah Faryab Ghazni Ghor Helmand Herat Juzjan Kabul Kandahar Kapisa Khost Kunarha Kunduz Laghman Logar Nangerhar Nooristan Paktia Paktika Panjshir Parwan Samangan Sar-i-Pul Takhar Urozgan Wardak Zabul Total 209429 118452 222818 248030 117602 134662 18329 237257 212084 205191 32535 188552 104812 511138 191169 74750 32122 96561 121076 74552 25898 284405 24699 146929 105067 21971 113727 104940 134037 161616 19269 129409 15093 4438181 446 237 475 574 259 282 67 469 470 370 112 401 242 1111 417 170 87 200 326 181 70 694 54 278 230 80 252 210 279 337 67 255 44 9726 Table A-2: Number of votes by Province among open polling centers. Source: IEC 41 B Validation and Robustness Checks B.1 Turnout One challenge to studies of voting behavior in Afghanistan involves estimating turnout without a good measure of voting eligible population. While it is impossible to construct the denominator of turnout given the lack of official registration rolls or a census to calculate voting eligible population, we have done additional “back of the envelope” calculations given knowledge of the process and available data.41 This measure gives us additional confidence in using self-reported turnout. The IEC gazetted stations prior to election day using their estimates of where voters were likely to turn out. Each polling center was allocated at least one stream, some were allocated multiple streams within the center. The cap on the number of voters at a single stream was 600. Provisions were made to add streams should the number of voters exceed 600. Using the actual number of streams at a station, rather than the gazetted number, as well as the number of votes recorded at that center, we are able to estimate a non-traditional measure of turnout. We use the number of streams multiplied by 600 to give a measure of the maximum theoretical turnout expected by the IEC. Next, we divided the total number of votes cast at the polling center by the calculated maximum theoretical turnout. If that turnout estimate was greater than one, we know that streams were added in increments of 600, giving us an estimate for the number of streams, in addition to those gazzetted that were added in that center. If the turnout estimate was below one, we know that no streams were added. Using the updated number of streams and the total number of votes, we calculate a new turnout estimate. Table A-2 shows the number of votes cast at polling centers that were open on election day, as well as the final number of streams. 41 Author (name redacted) served as an accredited election observer for the 2009, 2010, and 2014 Afghan elections working with the largest international election observation mission (name redacted). Our calculations are therefore based on intuitions as well as direct on-the-ground experience working alongside of electoral administrators, civil society groups, media, and independent observers. 42 If one suspects that there is ballot stuffing that could inflate the number of votes, this measure is likely to be high, but is the most accurate construction we have. We calculate an estimated turnout rate of 75 percent nationwide, and 73 percent in Kabul. We note that after the election, the IEC worked with the Elections Complaint Commission (ECC) to adjudicate the authenticity of various claims of ballot-stuffing. This process These figures indicate: (1) that turnout was quite high in this election, and; (2) our self-reported turnout measure is likely to be slightly low, if biased in any direction. B.2 Violence As a measure of violence affecting civilians, we use recently declassified incident reports submitted by ISAF forces and Afghanistan military and police forces that report combat occurring between ISAF units and insurgents, commonly known as significant activity or SIGACTs. As a robustness check to using self-reported perceptions of violence, which for the reasons discussed above we believe is the correct measure of the concept, we also conducted a robustness check using more recent attacks data, referred to as ”SIGACTS” (for ”significant activity”). SIGACTs are declassified reports on violent activity between insurgents and US/ISAF forces. We use SIGACTS data that are geo-coded to the nearest polling center, our primary sampling unit, to measure highly local attacks within the six months prior to the election. Table A-3 reports these results. Model 1 is specified identically to Table 2, model 10. Model 2 here is identical to Table 3, model 3– estimated on the non-trusting subsample. Model 3 is specified as Table 3, model 6, on the trusting subsample. We note that SIGACTs data are not available for all of the polling centers, so our samples are slightly smaller than in Tables 2 and 3 above. We note no substantive changes using this alternative to violence. 43 Table A-3: Likelihood of Voting (=1), Marginal Effects Violence Robustness Check Social Sanctioning Vote Buying Ethnic Attachment SIGACTs WJ Importance Services Male Urban Literacy Electricity Pashtun Constant Sample N Probit, Marginal effects. Errors clustered at the PSU * p<.05, **p<.01, ***p<.001 C Model 1 0.683*** (0.07) 0.023 (0.07) 0.115 (0.11) -0.000*** (0.00) 0.400*** (0.07) 0.729*** (0.06) 0.220*** (0.06) 0.216** (0.07) 0.346*** (0.06) -0.035 (0.06) -0.381*** (0.07) -0.663 Full 2790 Model 2 0.912*** (0.13) 0.193 (0.11) -0.073 (0.18) -0.000** (0.00) 0.282** (0.10) 0.735*** (0.10) 0.279** (0.10) 0.189 (0.11) 0.255** (0.10) 0.120 (0.10) -0.456*** (0.10) -0.776 Not Trusting 1028 Model 3 0.566*** (0.09) -0.093 (0.09) 0.269 (0.17) -0.000*** (0.00) 0.472*** (0.09) 0.722*** (0.08) 0.150* (0.07) 0.212* (0.09) 0.418*** (0.08) -0.142 (0.08) -0.269** (0.09) -0.561 Trusting 1762 Description of ABM We derive our predictions on the levels and motivations of turnout formally from an Agent-Based Model (ABM). These predictions are generally intuitive. This appendix is intended to give the reader a better knowledge of the structure and parameters of the Agent Based Model (ABM or the model) used. The appendix includes the expected utility calculations used by the agents, the default settings and a discussion of each parameter, as well as a more in-depth discussion of the predictions of the model. We divide this appendix into two sections. In section B.1 we give a brief overview of the 44 method and illustrate the simulations that produce the hypotheses we describe above. In section B.2 we discuss the model and initial settings more specifically. C.1 Hypotheses The theory described above the intuitive results of our simulations of various turnout environments on population levels of turnout. We use an Agent-Based Model (ABM) of cooperation to manipulate the basic Prisoner’s Dilemma setup described above, and explained in Table 1 in the text. The discussion here is intended for those interested in how we derived the predictions. To derive and test predictions on turnout, we employ an ABM. As described by Axelrod, agent-based modeling provides a way to do “thought experiments.” In this paper, most of the propositions are fairly intuitive when thinking about groups of actors who are incentivized to solve cooperation problems like those faced by voters, but the simulations serve as a way to verify the underlying intuition. The ABM allows us to introduce the role of population dynamics and individuals’ reputations within the population as key characteristics that increase or decrease cooperation (Jung and Long 2011). These characteristics may include payoffs to the game, individuals’ beliefs about the population, and affective ties. We model turnout as a problem of cooperation at its core, and only secondarily a problem of coordination. This dynamic is captured in a prisoner’s dilemma-like framework, where ideal points are taken into account. Patterns of agent cooperation and coordination within a population faced with Prisoner’s Dilemma ordered payoffs is analogous to voter turnout, especially since individuals have incentives to free-ride, as they will enjoy the benefits of distribution regardless of whether or not they turnout. Voters also prefer to turnout with others with whom they have strong ties. We are agnostic as to the source of these ties (they may be ethnic, social, partisan, ideological). In order to capture this concept—of affective ties– theoretically, we subtract a weighted penalty from the benefits to mutual turnout. Effectively, this means that cooperation/turnout with people who are unlike you on this dimension provides less 45 utility than cooperation/turnout with people who are similar to you on this dimension. Our ABM generated hypotheses follow from the same theory as in citation redacted. A population of voters face a decision to turnout or stay home summarized in Table A-1. Their payoffs are ordered according to the classic prisoner’s dilemma. These voters face the cooperative dilemma summarized above, and will pay various costs to turnout. Figure A-1: Default payoffs for Turnout simulations We simulate 100 agent populations where we look at the population effects of pairwise interactions to cooperate (turnout) or defect (stay home), where agents face varying incentives and costs to voting in the face of social sanctions, patronage, ethnic attachments, and violence. Agents seeking mechanisms to overcome cooperation problems can make use of weak political parties, social networks, as well as the payoffs for cooperation. For a more detailed description of the model and the emergent properties. Here, the basic model of cooperation used in Jung and Lake (2011) was modified to reflect a comparative lack of partisanship and institutionalized parties in Afghanistan, as well as higher probabilities of both electoral corruption and violence. For even more detailed information on the underlying structure of the model, and robustness checks, see the Supplementary Materials in Jung and Lake (2011). In each simulation we look at the cooperation rates in the population. Because we see cooperation as analogous to turning out to vote, these correspond to simu- 46 lated turnout rates in the population. Each prediction results from varying the basic incentives to turnout or stay home. We present comparative statics that sweep these parameters from low to high and track turnout in that population. The default settings reflect a weak party infrastructure as well as a relatively low level of partisanship. The single non-transferable vote with large district magnitudes has impeded a lack of political party development in Afghanistan, and nearly all candidates run as independents. Therefore, there is no de facto level of partisanship among Afghan voters. The strategy below is to simulate the various turnout environments we believe will impact turnout, and track predicted turnout. The underlying pattern of turnout generated informs out predictions. C.1.1 Social sanctioning hypothesis Within the prisoner’s dilemma setup described in Table 1, we think about a social sanctioning environment being one in which there are increasingly negative payoffs from a lack of community investment in public goods. The modeling framework allows us to decrement the payoff for mutual defection over multiple iterations of the simulation and track the rate at which agents (voters) cooperate. Figure A-2 shows the turnout on the y-axis as social sanctions for not voting increase (or the DD payoff becomes worse, read from right to left). Like the figures below, this is a comparative static result. Moving from right to left, the figure demonstrates that turnout increases dramatically as the threat or perception of negative payoffs for staying home increases. Conversely, as those penalties become less costly, turnout decreases significantly—leaving mainly strong partisans. Indeed, the net payoff to such an outcome need only be slightly less than what they would otherwise get from not voting to induce dramatic increases in predicted turnout. Social sanctions of this sort therefore need not be particularly costly to deliver to have a dramatic effect. We therefore argue that the social sanctioning mechanism is an important predictor for explaining the expressed levels of turnout witnessed in Afghanistan. H1: As social sanctions increase, turnout (cooperation) increases. 47 Figure A-2: Turnout levels as Penalties for not participating become increasingly large.42 C.1.2 Patronage/Vote-buying hypothesis We assume vote-buying includes a tangible good or service provided by a party or candidate in exchange for turning out. Within the framework of the PD, this is equivalent to adding to the voter’s expected payoff for turning out, or increasing the payoff for mutual cooperation. Figure B below illustrates changes in level of turnout created by simulating increases in the benefits to mutual cooperation (delivering patronage). Figure A-3 shows the comparative static results of moving both up and down from the standard payoff of 3, in increments of 0.2. These increases in the payoffs (along the x-axis) produce dramatic results in the predicted level of turnout, but only as the payoffs for mutual turnout become increasingly large compared to the status quo benefits to turnout. Immediately we can see that payoffs need to be unreasonably high to obtain participation above what is observed in Afghanistan. Essentially, ceteris paribus, an added payoff of about 1.0 unit, or half of the expected long-term communal returns to turnout, would be needed to achieve high levels of cooperation driven by patronage. The credibility of nascent Afghan parties and politicians to have the resources available to offer incentives large enough to offset the disincentives to vote seems questionable. Additionally, the human and physical infrastructure to target and identify cooperative voters, 48 and deliver these rewards seems lacking. Therefore, we do not think that patronage alone, or any marginal payouts through vote-buying, can explain higher levels turnout. Figure A-3: Cooperation/Turnout as benefits to mutual cooperation increase (patronage) 44 C.1.3 Ethnic Attachment Hypothesis Figure A-4 simulates the turnout obtained by increasing the weight on affective ties. Mechanically, this is equivalent to subtracting the weighted difference between agents’ randomly assigned ideological/ethnic values. Theoretically, the larger the weight on the difference that gets subtracted from any cooperative outcome should decrease turnout rates. These comparative static results show that high values on the salience on these affective components should in fact slightly decrease cooperation/turnout, or localize it. Essentially, when the costs to cooperating with people whose ideal points are distant from their own increase, cooperation in the population is not significantly affected– people are only willing to cooperate with those who are ethnically very similar. This could result in pockets of cooperation when the affective ties/ethnic groups are geographically concentrated, but what we see below is that even large increases in the salience of identity, does not seem to affect turnout. Specifically, H3: A stronger attachment to one’s ethnic group does not affect turnout (cooperation). 49 Figure A-4: Cooperation/Turnout as the strength of identity increases. C.2 45 Technical Appendix In this portion of the appendix, we outline the ABM’s mechanics (rather than the results) in greater detail. We discuss the types of agents, the setup of the simulations, expected utility calculations, and the default parameters. Voters, as agents, play a PD in which they have an assigned strategy: all cooperate (ALLC), all defect (ALLD) or tit-for-tat (TFT). Agents also have an individual ideal point [0,1]. This is designed to capture the idea that not all cooperative actions are created equal—two agents on the far left may view mutual cooperation as more beneficial than one of those agents will feel cooperation with an agent on the far right will be. To capture this, instances of mutual cooperation can be thought of as conducted at the midpoint of the two players’ ideological preferences. This weighted difference is subtracted from the payoff for cooperation. The model begins with user specification of the parameters. Payoffs are set. Each of the four outcomes of a PD (i.e., CC, CD, DC, and DD) is specified. In our model, higher payoffs to the CC outcome are analogous to tangible benefits from voting, such as personalistic goods like patronage received through vote-buying. They may also be akin to the positive psychic benefits that an individual feels from voting to affirm their 50 identity or otherwise support their “duty” to vote. We think of the CC outcome as occurring when an individual and the randomly selected member of her community both turn up at their polling station. The CC outcome should indicate investment in the collective goods. Additionally, worse payoffs for not voting, the DD outcome, are analogous to a social punishment from not voting, in which case sanctioning from community members drives cooperation. The DD outcome occurs when an individual actor defects against a randomly chosen member of her community, who also defects. This community has minimal investment in collective goods. The CD and DC payoffs are the situation in which free-riding takes place: either the individual or its community fails to invest, producing a socially sub-optimal investment. Next we set the population of actors. The number of actors of each strategy type is allocated to determine the predisposition to cooperation. “Nice” populations are populated predominantly with ALLC and TFT agents, “nasty” populations are heavy on ALLD strategy types. The affective spread is set, but for these examples we do not deviate from a normally distributed population centered at 0.5. The weight on affective ties is also set. The higher the weight, the less attractive cooperation with an “unlike” agent becomes. The focus on “ethnicity” is analogous to the discussion of strong ideological and/or partisan attachments found in the literature that may drive voting from a sense of duty to one’s group or achieving psychic benefits from voting. Setting this dynamic allows us to incorporate psychic explanations for cooperation as a baseline for determining turnout given hardcore partisans. To examine turnout, we look at the default rate of cooperation in the population. Some players will be predisposed to cooperate. Secondly, we will look at the observed cooperation rate in this simulated world. Agents begin the simulation randomly paired and playing their default strategy for a set number of rounds to gather some sense of the population they are in: is it nice or nasty, are their beliefs relatively moderate, or are they assessed heavy penalties for defection? These beliefs will continue to be updated as voting is iterative, even though 51 agents (voters) have some baseline beliefs that aid their decision-making. In the case of voting, this could arise from witnessing turnout in previous elections. After the short learning phase, agents are given the option of leaving the standard PD to join either a network or a hierarchy. The network allows them to buy information about another player—essentially to find out if the person they are paired with in the next round is likely to cooperate or defect, and if they are likely to have to pay a heavy penalty ideologically for playing this person. The fee is exogenously set. Communities, such as villages in Afghanistan, are analogous to potential networks of this kind. The hierarchy is a way for agents to buy third party enforcement to mandate cooperation amongst member players. Joining this organization mandates cooperation amongst members. If an agent is paired with another member of the hierarchy in a round, it cooperates at the mandated rate, or is assessed a penalty for suckering someone in its organization. A large number of players using this form of organization will increase the cooperation rate in the population, particularly if these players are ALLD types. Hierarchies are exogenously created, at a specified ideal point (at which cooperation takes place), with a known rate of induced cooperation and penalty. Here, they are analogous to political parties or ethnic organizations. After players have chosen their organization, they play a randomly chosen member of their community according to their strategy as well as their organizational choice. The simulations that look at rates of cooperation that result from these environments are detailed in section B.1 of the appendix, and their intuition in the body of the paper. Expected Utility Calculations This section defines and explains the expected utility calculations that agents make when deciding to join a market, hierarchy or network. In addition to the user-defined parameters summarized in Table 1, agents are defined by their probability of cooperation (γ), which is either fixed (ALLC γ = 1 and ALLD γ = 0) or variable (TFT γ = 0 or 1). For purposes of calculating an agent’s expected utility (as opposed to the actual payoffs defined above in the text), kij = w(|pi −ρ—/2), where ρ is the agent’s belief (continuously updated) about the mean ideal point of the population. For the hierarchy, kih = w|pi ph |. 52 In addition, the following endogenous variables are created and updated as the simulation unfolds: β = the agent’s belief about the cooperation rate of the population σ = proportion of the population the agent has not already played For each agent i : Expected Utility in the MarketThe payoff for a market interaction is essentially the probability of getting each outcome—based on the probability that the actor itself will cooperate (determined by their strategy type) multiplied by the probability that they believe their opponent will cooperate (determined by their beliefs about the cooperation rate in the population). M = (γβR − kij ) + γS(1 − β) + βT (1 − γ) + P (1 − γ)(1 − β) (1) Expected Utility in Network for Fixed Strategy Players M −φ (2) Expected Utility in Network for Contingent Strategy Players The value of the network is essentially likelihood that the player receives information about its current partner that changes its behavior (in most cases to prevent being suckered, or receiving the CD payoff) plus the likelihood it does not, less the fee imposed to join the network and gain information (φ). n m X γ σ[ βα )(βR − kij ) + P (1 − β)] + M (1 − σ) − φ ( n−1 (3) γ=1 Expected Utility in the Hierarchy The utility for entering a hierarchy will depend on the proportion of the population in the hierarchy the player will join (θ), weighed against the likelihood of cooperation within the hierarchy (q), the punishment for defection (v), the tax (τ ) and the ideal point of the hierarchy (ph ). θ{(q 2 R − kih ) + qS(1 − q) + [qT (1 − q) − v] + [P (1 − q)2 − v]} − (1 − θ)M − τ 53 (4) Agents choose that organization with the highest expected utility in each round. Actual payoffs may differ from expected payoffs for any individual agent, but on average will be equal. Table A-4: Default Parameter Values for Simulations Parameter Symbol Description Default Value Times the simulation is run incrementing 20 General Increments a parameter Repetitions Times the identical simulation is repeated 5 with different random seeds Rounds Mean for ideal point Number of rounds of play 20 Distribution of actors’ policy preferences 0.5 in population Weight on policy preferences 1.0 Learning Set as either number of rounds or popu- 10 rounds rounds lation convergence to within a proportion Weight on W ideal of the true population mean 100 Agents (Total) All Cooper- Number of actors of type always cooperate ate All Defect Number of actors of type always defect TFT Number of actors playing tit-for tat strategy Payoffs R R Payoff for CC outcome 3 S S Payoff for CD outcome 0 T T Payoff for DC outcome 5 54 Table A-4 – Continued Parameter Symbol Description Default Value P P Payoff for DD outcome 1 θ Proportion of the population in hierar- 10 Hierarchy Initial size chy. In first round of play, this variable is set exogenously; after the first round, this variable is endogenous and defined as the number of players in the previous round. Penalty V Penalty for defection within the hierarchy 0.5 Prob of Co- Q Rate at which the agents cooperate with 0.99 operation other agents in the hierarchy Tax τ Tax assessed on members of the hierarchy 0.2 Ideal point ph Ideal point of the hierarchy 0.5 Cost φ Fee for joining the network 0.2 Width α Number of past cooperative partners each 3 Network agent i can ask for information about agent j Depth L Number of levels agent i can survey 3 Memory mn How many past moves each agent remem- 5 bers within the network 55
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