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Decentralized Targeting of Anti-Poverty Programs. Community-based targeting. Central government delegates authority over the targeting and delivery of services to local communities, But retains control over the allocation of budgets to local government areas.
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Community-based targeting • Central government delegates authority over the targeting anddeliveryof services to local communities, • But retains control over the allocation of budgets to local government areas. Trade-off? Information vs. accountability? • Yes, better information is available locally on who is poor (lower costs monitoring, enforcement, local needs) • But are local organizations accountable to their poor? • Local capture when communities are heterogenous (Bardhan and Mookherjee) • Anecdotal evidence of program capture by local elites
What determines outcomes for the poor? • Targeting of communities by the center, or of families by the communities? • What explains inter-village differences in performance at reaching the poor? • Does targeting performance vary with amount received from the center? • What role is played by other factors, including local institutions? Two case studies of decentralized programs: Bangladesh’s Food-for-Education Program and Argentina’s Trabajar Program
Case Study 1: Bangladesh’s Food for Education Program • Food to households with primary school children, • conditional on attending 85% of classes • 2 million participants in 1995-96 Evidence of significant gains in school attendance • A stipend with a value < ½ the mean child wage was enough to assure nearly full school attendance for participants. • Only modest foregone income through displaced child labor, so sizeable transfer benefits (Ravallion and Wodon, 2000). But has the program reached the currently poor?
Two stages of targeting 1st stage: • “Economically backward”/”low literacy” Union Parishads are chosen; one from each Thana, then top up. • Anecdotal evidence of political manipulation/lobbying 2nd stage: • Households are identified within each Union by the School Management Committee (teachers, parents, donors, local representatives) • Eligibility criteria (widows, day-laborers, lowly occupations, landless, children)
1: Theory and measurement Theory of Community-Based Targeting • The center • allocates a fixed aggregate budget across communities: • does not know how the budget is allocated within villages • The community • allocates budget between ‘poor’ and ‘non-poor’ within the community
The local allocation problem • Proportion Hiof the population is poor • Pareto efficiency: collective decision-making can be represented by weighted sum of the aggregate (p.c.) welfare function for the each subgroup (poor/non-poor). • Weight poor/non poor • Optimal allocation: • “Targeting differential”:
The center’s allocation problem • Own weights on the poor/non poor • Information set (non overlapping with the one available locally) • Choose Gi to maximize: s.t. + local optimal allocations Optimal outlays:
Poor? Yes No Program? Yes s11 s12 G No s21 s22 1-G H 1-H 1 Measuring targeting performance Notation • Each participating household receives same amount • The “targeting differential”: • Targeting differential can be calculated at the national/local level (decomposable)
Intra Inter All villages 0.118 0.079 0.039** 0.036 0.003 Participating villages only 0.462 0.315 0.134** 0.146 -0.049 2: Empirical model and results Targeting differential for FFE and its decomposition • little sign of trade-off; the center is not more pro-poor in targeting villages than the villages in targeting households • heterogeneous performance across communities (negative in 24% of the communities)
Empirical model of program allocations • Model allocations within villages between poor and non-poor as a function of the poverty rate, the budget received by the center, and village characteristics. • Model the center allocation across villages as a function of village characteristics in the center’s information set.
Information structure and identificationTesting exogeneity of central allocation at village level and exogeneity of information available to center
Empirical models1. Intra-village allocations: • for the sample of participating villages (Gi >0). • Test exogeneity of Gi using relative position as an IV • 2. Center’s allocations: Test exogeneity of Zi (program eligibility criteria) using LIML for limited dependent variables (Smith Blundell)
Explanatory variables • Eligibility criteria: landless, female headed, lowly occupations, children • Structural characteristics: agricultural development, non-farm income diversification, illiteracy, schools, banks, shocks • Openness: electricity, phone, accessibility • Inequality of land holdings • Local institutions: net transfers to the poor, recreational clubs, cooperatives
A village is better at reaching the poor if it: • receives larger allocation from the center; targeting improves both absolutely and relatively (Gi ) • has a lower fraction of widow female heads (eligibility) • has fewer schools, has high cropping intensity, has lower illiteracy rate, has lower incidence of shocks (structural) • is less isolated: telephone, closer to Thana HQ (openness) • has more equal land distribution (inequality) • is not already helping the poor (informal net transfers)
The center targets villages that: • are in regions with higher incidence of landlessness • have a higher fraction of households in low professions (relative to region) • are hit by a shock (natural disaster/ epidemic /pests) • have a Grameen Bank branch • has a village member in the UP council Political economy constraints: • Low predictive power of eligibility criteria • A wider range of communities are targeted than would appear to be justified by the program’s stated objectives
Summary for Bangladesh case study • On measuring targeting performance • Program is mildly pro-poor • The center is not good at targeting poor villages (political constraints) • Local communities are more accountable to the poor; no trade-off evident • On explaining performance • Fraction poor/non poor receiving the program and targeting increase with the size of the budget • early capture by the non-poor • Indications that differences in relative power matter • Role of local level inequality in determining outcomes • Local political economy helps perpetuate inequality in the presence of central efforts at redistribution
Case Study 2: Argentina’s Trabajar Program • Trabajar program aims to reduce poverty by: • providing short-term work at low wages; self-select unemployed workers from poor families; • locating the projects in poor areas (physical and social infrastructure; compete on a points system) • Local groups (municipalities and NGOs) are the sponsoring agencies and must provide co-financing of non-wage costs. • Concerns about reaching poor areas
Measuring targeting performance • Targeting differential is estimated by the regression coefficient of program spending on poverty rate estimated across departments (n=510) • This identifies difference in amounts going to the poor vs non-poor • Overall targeting differentials are significantly positive • Overall TD improved with program expansion and worsened with contraction, as in Bangladesh’s FFE
Panel-data test using inter-provincial allocation of spending • Test equation with province fixed effects: • Aggregate spending allocation is allowed to be endogenous in that it is correlated with the province effect
Summary of Argentina Case Study • As for Bangladesh’s FFE, targeting worsens (improves) as outlays contract (expand) • Extra public action is warranted to protect the poor during fiscal adjustment • Evaluations that ignore political economy can greatly underestimate the gains from successful add-on social programs • Efforts of combine cuts with better targeting may violate political economy constraints • A pro-poor shift in spending during adjustment will not be politically easy