Title: Targeting and Public Expenditure
1Targeting and Public Expenditure
2Themes
- General Issues
- Goals
- Measurement
- Stylized facts
- Applications to social safety nets
- Comparison of instruments
3Targeting
- Goal -- to concentrate benefits among the
neediest - Implication
- some people benefit and others do not AND/OR
- needier get bigger benefit than less needy
4Benefits of targeting
- Assumptions
- 15 million population
- 3 million poor
- 150 million budget
- No targeting
- everyone gets 10
- 80 of funds go to the non-poor
5Benefits of targeting
- Assumptions
- 15 million population
- 3 million poor
- 150 million budget
- No targeting
- everyone gets 10
- 80 of funds go to the non-poor
- Targeting - Option I
- only poor receive 50
- same budget
6Benefits of targeting
- Targeting - Option I
- only poor receive 50
- same budget
- Targeting Option II
- only poor receive 10
- budget reduced to 30 million
- Assumptions
- 15 million population
- 3 million poor
- 150 million budget
- No targeting
- everyone gets 10
- 80 of funds go to the non-poor
7Stepping back
- What is the role of broad-based vs targeted
programs in poverty reduction? - Where is the distributional instrument placed?
- How private is the good?
- Is goal (only) poverty reduction?
- What is the concept of poverty
- utility, income, capabilities?
8Measurement (the usual morass of detail)
- The counterfactual pre-intervention welfare
- Usual measurement problems
- Recording and valuing consumption
- Comparing across time and space
- Equivalence scales
- Behavioral change in response to provision
- Labor supply
- Consumption of goods/services
- Private transfers
9Measurement (the usual morass of detail)
- The value of the benefit
- Cost is not value (vaccines)
- Costs hard to measure (data problem)
- Values not same across hh (schools)
- Quality differences (data problem)
10Conventional measures
- Errors of inclusion/exclusion
- Simple
- Discrete
- Weighting issue
11TARGETING ERRORS AND ACCURACY
INCORRECTLY GIVEN BENEFITS
ACTUAL STATUS
POOR
NON-POOR
GOOD TARGETING
Error of Inclusion Type II
POOR
CLASSIFIED AS
CORRECTLY DENIED BENEFITS
Error of Exclusion Type I
NON -POOR
INCORRECTLY DENIED BENEFITS
12Conventional measures
- Errors of inclusion/exclusion
- Simple
- Discrete
- Weighting issue
- Full distributional analysis of incidence and
coverage / concentration coefficients and curves - Extended Ginis (Clert and Wodon, 2000)
- Average vs marginal incidence
13Stylized facts
- Health, education as whole sectors usually mildly
progressive - Progressive as of welfare
- Less so absolutely
- Primary gt secondary gt tertiary
- Demographics of measure
- Pyramid effect
- Self-selection into private market
- Food price subsidies absolutely regressive,
relatively progressive - Transfers gt health, education
14Share of Benefits Accruing to the Poorest 40
Percent, by Country and Sector
15Applications to social safety nets
- What are reasonable expectations?
- What do we know about options?
16Targeting is a tool, not goal(I.e. must balance
tradeoffs)
- Benefits
- lower costs
- greater impact
- Errors of exclusion (undercoverage)
- Costs
- administrative
- political economy
- incentive
- Errors of inclusion (leakage)
17Administrative costs
- Targeting costs only a portion of total
administrative costs - Usually more exact targeting imposes higher
administrative costs - Just because costs exist doesnt mean they arent
worth paying
18Incentive Effects
- OECD literature worries about work disincentives
from means tests, measures them - May be less important in some of our programs
because - not based on means test
- eligibility
- benefit level
- incentive more to conceal income than reduce it
- low level benefit, so incentives remain
19Political Economy
- Can affect
- support and budget for safety net
- mix of programs
- details of each
- Reasons to support program
- own present benefits
- future benefits
- benefits for others you care about
- altruism, externalities
- suppliers
- Coalitions
20Quantifying the Tradeoff
- Study of 30 Latin American programs, late 1980s
early 1990s (not contradicted to date) - Tried to measure
- errors of inclusion
- errors of exclusion
- administrative costs
- total
- of targeting
- qualitative information on requirements, options
21(No Transcript)
22Share of Benefits Accruing to the Poorest 40
Percent, by Sector
23INDIVIDUAL ASSESSMENT (15)
TARGETING
24GROUP CHARACTERISTICS (9)
TARGET GROUP
25SELF-TARGETING (6)
26Share of Benefits Accruing to Poorest 40 Percent,
by Targeting Mechanism
27Errors of exclusion
- Lacked data on participation rates
- Unclear interpretation
- self-targeting (good)
- errors of exclusion (bad)
- budget, outreach, communications, logistics, etc.
appear more important than mis-identification due
to screening
28Total Administrative Costs as a Share of Total
Costs, by Targeting Mechanism
29Targeting Costs as a Share of Total Costs, by
Targeting Mechanism
30Figure 9 Targeting Cost Share and Benefits
Accruing to Poorest 40 Percent
100
80
60
40
20
0
1
2
3
4
Share of Targeting Costs ()
31Conclusions
- progressivity of incidence
- administrative costs not prohibitive
- no a priori ranking by mechanism
32Self-Targeting
- Good or service available to all, but only the
poor choose to use - Examples
- hard physical labor for low wages
- broken rice, coarse bread, etc.
- waiting times
- stigma
- May be difficult to find vehicle suitable for
large transfers - Costs to beneficiaries reduce net benefits
33Categorical targeting
- Age (child allowances, non-contributory pensions)
- Disability, unemployment
- Ethnicity (scheduled castes in India, Natives in
Canada) - Easy to medium administratively
- May not be very precise
34Geographic
- More accurate the smaller the unit used
- But a limit based on data, service delivery
system, politics - More viable for services used daily than yearly
- New tool merging census and survey data may make
more accurate
35Proxy means test
- Increasingly popular
- A synthetic score calculated based on easily
observed characteristics (household structure,
location and quality of housing, ownership of
durable goods) - At the complex end of requirements
- Indicators tend to be static
36Community-Based Targeting
- Use existing local actor (teacher, nurse,
clergyman) or new civic committee to decide who
gets what - local actor may have best information, but
- structure may impinge on actors performance in
their original local roles, - may generate conflict
- capture by local elites still possible
- little empirical evidence to date