Title: Poverty measurement
1Poverty measurement
- Michael Lokshin,
- DECRG-PO
- The World Bank
2Properties and Robustness
- Questions for the analyst
- How do we measure welfare?
- Individual measures of well-being
- When do we say someone is "poor"?
- Poverty lines.
- How do we aggregate data on welfare into a
measure of poverty? - How robust are the answers?
3Three components of poverty analysis
Welfare Indicators
Poverty Lines
Poverty Analysis
4Adding up poverty Headcount
-
-
- q no. people deemed poor
- n population size
- Advantage easily understood
- Disadvantages insensitive to distribution below
the poverty line e.g., if poor person becomes
poorer, nothing happens to H. - Example A (1, 2, 3, 4) B (2, 2, 2, 4) C
(1,1,1,4) - Let z 3. HA 0.75 HBHC
5Adding up poverty Headcount
6Adding up poverty Poverty Gap
Advantages of PG reflects depth of
poverty Disadvantages insensitive to severity
of poverty Example A (1, 2, 3, 4) B (2,
2, 2, 4) Let z 3. HA 0.75 HB PGA 0.25
PGB.
7Adding up poverty Poverty Gap
8Adding up poverty Poverty Gap
- The minimum cost of eliminating poverty (Z-?z)q
-- Perfect targeting. - The maximum cost of eliminating poverty Zq --
No targeting. - Ratio of minimum cost of eliminating poverty to
the maximum cost with no targeting - Poverty gap -- potential saving to the poverty
alleviation budget from targeting.
9Adding up povertySquared Poverty Gap
- Week Transfer Principal A transfer of income
from any person below the poverty line to anyone
less poor, while keeping the set of poor
unchanged, must raise poverty -
- Advantage of SPG sensitive to differences in
- both depth and severity of poverty.
- Hits the point of poverty line smoothly.
- Disadvantage difficult to interpret
- Example A (1, 2, 3, 4) B (2, 2, 2, 4)
- z 3 SPGA 0.14 SPGB 0.08
- HAHB, PGAPGB but SPGAgtSPGB
10Adding up poverty FGT-measures
Additivity the aggregate poverty is equal to
population- weighted sum of poverty level in the
various sub-groups of society. Range
Rawls welfare function maximize the welfare of
society's worse-off member.
11Adding up poverty FGT-measures
Derivatives
12Adding up poverty Recommendations
- Does it matter in poverty comparisons what
measure to use? - Depends on whether the relative inequalities
have changed across the situations being
compared. - If no changes in inequality, no change in
ranking. - Recommendations
- Always be wary of using only H or PG check SPG.
- A policy conclusion that is only valid for H may
be quite unacceptable.
13Adding up poverty Example 1
- Example Effect of the change in price of
domestically produced goods on welfare. - Price of rice in Indonesia
- Many poor households are net rice producers, the
poorest households are landless laborers and net
consumers of rise. - Policy A Decrease in price of rice small loss to
person at poverty line, but poorest gains - Policy B Increase in price poorest loses, but
small gain to person at poverty line. - So HA gt HB yet SPGA lt SPGB
- Which policy would you choose?
14Adding up poverty Example 2
- Poverty line (6)
- Initial distribution (1,2,3,4,5,6,7,8,9,10)
- HC 0.50
- Poverty gap (5/6,4/6,3/6,2/6,1/6,0) 0.25
- SPG (25/36,,0) 0.16
- Poverty Alleviation Budget 6
- Case 1 (6,3,3,4,5,6,7,8,9,10)
- HC 0.40
- PG (0,3/6,3/6,2/6,1/6,0..0) 0.15
- SPG (0,9/36,9/36,4/36,1/36,0..0) 0.07
- Case 2 (1,2,6,6,6,6,7,8,9,10)
- HC 0.20
- PG (5/6,4/6,0,,0) 0.15
- SPG (25/36,16/36,0,,0) 0.11
15Social Welfare function
- Utilitarian Social Welfare Function. Social
states are ranked according to linear sum of
individual utilities -
- We can assign weight to each individuals
utility - Inclusive and Exclusive Social Welfare Functions
16Robustness of poverty comparisons
- Why should we worry?
- Errors in living standard data
- Uncertainty and arbitrariness of the poverty line
- Uncertainty about how precise is the poverty
measure - Unknown differences in need for the households
with similar consumption level. - Different poverty lines that are completely
reasonable and defensible. - How robust are our poverty comparisons?
- Would the poverty comparison results change if we
make alternative assumptions?
17Robustness Poverty incidence curve
- 1. The poverty incidence curve
- Each point represents a headcont for each
possible poverty line - Each point gives the of the population deemed
poor if the point on the horizontal axis is the
poverty line.
18Robustness Poverty depth curve
- The poverty depth curve area under poverty
incidence curve - Each point on this curve gives aggregate poverty
gap the poverty gap index times the poverty
line z.
19Robustness Poverty severity curve
- The poverty severity curve area under poverty
depth curve - Each point gives the squared poverty gap.
20Robustness Formulas
- Poverty incidence curve
- Poverty deficit curve
- Poverty severity curve
21Robustness First Order Dominance Test
- If the poverty incidence curve for the A
distribution is above that for B for all poverty
lines up to zmax then there is more poverty in A
than B for all poverty measures and all poverty
lines up to zmax
22Robustness First Order Dominance Test
- What if the poverty incidence curves intersect?
-- - Ambiguous poverty ranking.
- You can either
- i) restrict range of poverty lines ii) restrict
class of poverty measures
23Robustness Second Order Dominance Test
- If the poverty deficit curve for A is above that
for B up to zmax then there is more poverty in A
for all poverty measures which are strictly
decreasing and weakly convex in consumptions of
the poor (e.g. PG and SPG not H). - e.g., Higher rice prices in Indonesia very poor
lose, those near the poverty line gain. - What if poverty deficit curves intersect?
24Robustness Third Order Dominance Test
- If the poverty severity curve for A is above that
for distribution B then there is more poverty in
A, if one restricts attention to distribution
sensitive (strictly convex) measures such as SPG. - Formal test for the First Order Dominance
- Kolmogorov-Smirnov test
25Robustness Examples
- Initial state (1,2,3)
- (2,2,3) (1,2,4) unambiguously lower poverty
- (2,2,2) poverty incidence curves cross.
- compare z1.9 and z2.1
- poverty deficit curves do not cross
- Thus poverty has fallen for all distribution
sensitive measures. - Example 2
- Initial State A (1,2,3) Final State B
(1.5,1.5,2)
26Robustness Recommendations
- First construct the poverty incidence curves up
to highest admissible poverty line for each
distribution. -
- If they do not intersect, then your comparison is
unambiguous. - If they cross each other then do poverty deficit
curves and restrict range of measures
accordingly. - If they intersect, then do poverty severity
curves. - If they intersect then claims about which has
more poverty are contentious
27Robustness Egypt, poverty changes between 1996
and 2000
28Poverty profiles Additivity
- How poverty varies across sub-groups of society.
Useful to access how the sectoral or regional
patterns of economic change are likely to affect
aggregate poverty. - Additive poverty measures (e.g., FGT class).
- Suppose population is divided into m mutually
exclusive sub-groups. - The poverty profile is the list of poverty
measures Pj for j1,,m. - Aggregate poverty for additive poverty measures
- Aggregate poverty is a population weighted mean
of the sub-group poverty measures.
29Poverty profiles Example
- Urban population (2,2,3,4)
- Rural population (1,1,1.5,2,4)
- Zu3,Zr2,n9,nu4,nr5,
- Direct way n9 q7 Hq/n0.78
30Poverty profiles Two types
- Two main ways to present poverty profiles
- Type A Incidence of poverty for sub-groups
defined by some characteristics (e.g., place of
residence) - Type B Incidence of characteristics defined by
the poverty status.
31Poverty profiles
- Select the target region for poverty alleviation.
- Geographic targeting. If one chooses South more
money will go to poor. So Type A is preferable.
Minimizes the poverty gap. - General rule When making the lamp-sum transfers
with the aim to minimize the aggregate value of
FGT type of poverty Pa the next unit of money
should go to the sub-group with the highest value
of Pa-1.
32Poverty profiles Egypt regions
33Poverty profiles Egypt (Type A)
34Poverty profiles Multivariate
- Univariate Simple cross-tabulation of poverty
measures against specific variables - Multivariate Poverty measure is modeled as a
function of multiple variables or poverty
regression - Model household expenditure or income first and
then predict poverty measures based on this
regression. Do not run probit on poverty measure
when expenditure data is available. - Steps
- Estimate regression Log(Ci)??Xi?I
- Predict consumption E(Ci)Exp(?Xi?2/2)
- Calculate poverty rates based on predicted
consumption, or - Calculate probability of being poor, then the
national headcount index will be equal to
weighted average of the predicted probability,
etc. Simulations.
35Regression of log consumption per capita on
characteristics of household and household head
for seven regions of Egypt.
36Impact of changes in household characteristics on
poverty