Title: Measuring and Modeling Poverty: An Update
1Measuring and Modeling Poverty An Update
Frontiers in Practice Reducing Poverty Through
Better Diagnostics PREM Workshop, World Bank,
March 2006
- Martin Ravallion
- Development Research Group, DEC
- World Bank
2- Part 1 Measuring poverty
- 1.1 What is a poverty line?
- 1.2 Objective poverty lines
- 1.3 Subjective poverty lines
- 1.4 Poverty measures revisited
- 1.5 Robustness tests
- 1.6 Growth incidence curves
- 1.7 Measuring the impacts of policies
3- Part 2 Modeling poverty
- 2.1 Static models
- 2.2 Poverty mapping
- 2.3 Dynamics Repeated cross-sections
- 2.4 Dynamics Panel data
- 2.5 Micro growth models
4 5 1.1 What is a poverty line?
- The welfare ratio Add up expenditures on all
commodities consumed (with imputed values at
local market prices) and - Deflate by a poverty line (depending on household
size and composition and location/date) - gt real expenditure or welfare ratio
price vector facing person i
quantities consumed by i
But what is z?
6The poverty line as money-metric welfare
- For informing anti-poverty policies, a
poverty line should be absolute in the space of
welfare - This assures that the poverty comparisons are
consistent in that two individuals with the same
level of welfare are treated the same way. - Welfare consistency in poverty comparisons will
be called for as long as - the objectives of policy are defined in terms of
welfare, and - policy choices respect the weak Pareto principle
that a welfare gain cannot increase poverty,
7The poverty line as money-metric welfare
- The ideal poverty line should then be the
minimum cost to a given individual of a reference
level of welfare fixed across all individuals
eexpenditure function, giving minimum cost of
achieving welfare level wz when facing prices p
and with characteristics x Welfare function
8Poverty line as the cost of basic needs
quantity consumed of good j by i
- Poverty line is the cost of a bundle of goods
- needed to assure a minimum level of welfare
9How then do we measure welfare?
- Traditional approach in economics an
interpersonally comparable utility function
defined on consumptions, with differences in
tastes represented by a vector of household
characteristics - Consistent with choices over private goods, i.e.,
q maximizes w(q, x) at given x. - But interpersonal comparisons of utility are
essential, and x also serves this role.
10Sens capability-based approach an
interpretation
- Welfare depends on the functionings (beings and
doings) that a person is able to achieve. - Poverty means not having an income sufficient
to support specific normative functionings.
- Functionings depend on goods consumed and
characteristics. Utility depends on
functionings. - Thus we can still derive as the reduced
form. - Functioning-consistency requires that fixed
normative funtionings are reached at the poverty
line. - Multiple solutions for the poverty bundle
- Minimum income s.t. all normative functionings
are met - Income level at which functionings are met in
expectation.
11Two generic problems
- Identification problem how to weight aspects of
welfare not revealed by market behavior. - How do family characteristics (such as size and
composition) affect individual welfare at given
total household consumption? - How to value command over non-market goods
(including some publicly supplied goods)? - How to measure the individual welfare effect of
relative deprivation, insecurity, social
exclusion? - Referencing problem what is reference level of
welfare above which one is not poor, i.e., the
poverty line in welfare space, which must anchor
the money-metric poverty line. - Poverty measurement in practice attempts to
expand the information base for addressing the
identification and referencing problems
12Absolute vs. relative poverty
- Poverty should be absolute in the space of
welfare but relative in the space of
commodities - Welfare depends on relative income
- (where m mean income)
- Welfare poverty line
- which gives poverty line as a function of the
mean
1/day
13Evidence for Malawi
- Relative deprivation amongst the poor?
- Test for perceived welfare effects of relative
deprivation using self-assessed welfare and
perceived welfare of friends and neighbors
(Lokshin and Ravallion) - Subjective welfare addresses the identification
problem. - Findings Relative deprivation is not a concern
for most of the sample, although it is for the
comparatively well off (upper fifth, esp., in
urban areas). - gt welfarist explanation for the high priority
given to absolute poverty in poor countries.
141.2 Objective poverty lines
- 1. Cost-of-basic-needs method
- Poverty line cost of a bundle of goods deemed
sufficient for basic needs. - Food-share version poverty line
- Cost of food-energy requirement
- Food-share of poor
- 2. Food-energy intake method
- Find expenditure or income at which food-energy
requirements are met on average. - i.e., functioning consistency in expectation, but
only one functioning
15Methods of setting poverty lines matter!
16Problems to be aware of
- 1. Defining "basic consumption needs"
- Setting food energy requirements (variability
multiple equilibria activity level). - Setting "basic non-food consumption needs"
(behavioral approaches). - 2. Consistency in terms of welfare
- Is the same standard of living being treated the
same way in different sub-groups of the poverty
profile? If not, then the profile may be quite
deceptive. - Is the definition of welfare consistent with the
definition of poverty? If some good is purchased
by poor people why should it not be included in
the poverty bundle? - Key question how sensitive are the rankings in
a poverty profile to these choices?
17Inconsistent poverty lines?
- Example 1 Cost-of-basic-needs method
of calories from each source of calories from each source
"urban" rural"
rice 50 40
cassava 10 40
vegetables 20 10
meat 20 10
- The two bundles yield same food-energy intake.
- But the "urban" bundle is almost certainly
preferable - The standard of living at the urban poverty
line is higher than at - the rural line.
- This makes the poverty comparison inconsistent,
which can - distort policy making based on the poverty
profile.
18Example 2 "Food-energy intake method"
- Different sub-groups attain food energy
requirements at different standards of living, in
terms of real consumption expenditures. e.g.,
"rich" urban areas buy more expensive calories
than "poor" rural areas.
Do your poverty lines have the same real value to
the poor across the poverty profile? Much
evidence that they do not!
19Allowing for differences in relative prices
- Ideally we only want to adjust the poverty bundle
for differences in relative prices - The problem is how to implement this ideal in
practice - The identification problem remains
- Parametric demand models If we know the
parametric utility function then or we can figure
it out from demand behavior then use this to
determine the cost of the reference welfare level
in each region - Numerical methods
- Look at consumption behavior of poorest x
nationally in each region of the country - Cost the consumption bundle of that group in each
region - Calculate the poverty rate nationally
- Iterate if the answer differs too far from x
20When non-food prices are missing
- Step 1 Find the cost at prevailing prices of a
single national food consumption bundle that
assures that recommended caloric requirements are
met at prevailing tastes nationally. This gives
the food poverty line. - Step 2 Set the non-food allowance, consistent
with consumption behavior of those who can either
just attain or just afford the food poverty line.
Utility-consistency can still be a problem!
21Testing poverty lines
- Well-defined poverty bundles by area
-
- Complete price matrix (commodity x area)
- Revealed preference test for utility-consistency
(Lokshin and Ravallion) - This assumes homogeneous preferences (given x).
- The problem of welfare comparisons across
different tastes remains. - A promising clue subjective welfare data
221.3 The social subjective poverty line
- The Minimum Income Question (MIQ)
- "What income do you consider to be absolutely
minimal, in that you could not make ends meet
with any less?
- Is this method suitable for developing countries?
- Can one estimate z without the MIQ?
23Subjective poverty lines for developing countries
- Minimum income question is of doubtful relevance
to most countries - Subjective poverty lines can be derived using
simple qualitative assessments of consumption
adequacy. - Consumption adequacy question
- Concerning your familys food consumption
over the past one month, which of the following
is true? - Less than adequate ...1
- Just adequate ........ 2
- More than adequate.. .3
-
- "Adequate" means no more nor less than what
the respondent considers to be the minimum
consumption needs of the family.
24Modeling consumption adequacy
- Individual needs are a latent variable
Subjective poverty line identified from
qualitative data using the model
(Pradhan and Ravallion)
25- Examples for Jamaica and Nepal
-
- Respondents asked whether their food, housing
and clothing were adequate for their familys
needs. - The implied poverty lines are robust to
alternative methods of dealing with other
components of expenditure. - The aggregate poverty rates turn out to accord
quite closely with those based on independent
objective poverty lines. - However, there are notable differences in the
geographic and demographic poverty profiles.
261.4 Poverty measures revisited
General class of additive (subgroup consistent/
subgroup decomposable) measures
Aggregate poverty index
- Individual poverty index
- non-increasing in y
- non-decreasing in z
Unidimensional approach y and z are
scalars Multidimensional approach y and z are
vectors
27Money-metric welfare vs. multidimensional
poverty measures
- 1. Multidimensional poverty measurement
- Person i is poor iff
- 2. Welfare function approach to poverty
measurement - Person i is poor iff or
equivalently - Person i is poor iff where
- Surely these must be consistent, so why do we
need both approaches? - The real issue is how to implement
multi-dimensional welfare metrics, whether or not
one uses a multidimensional poverty measure.
28FGT measures
- Headcount index (H) living in households
with income per person below the poverty line. - Poverty gap index (PG) mean distance below the
poverty line as a proportion of the poverty line - Squared poverty gap index (SPG) poverty gaps
are weighted by the gaps themselves, so as to
reflect inequality amongst the poor (Foster et
al., 1984).
29FGT multidimensional version
- (Bourguignon and Chakravarty, 2003)
Four groups of parameters v weights attached
to each dimension elasticity of substitution
(shape of contours) poverty aversion
parameter (concavity) z poverty lines (how
can they be constant?
30Watts measure
- Watts index based on the aggregate proportionate
poverty gaps of the poor -
- This is the only index that satisfies all
accepted axioms for poverty measurement
including focus axiom, monotonicity axiom
transfer axiom, transfer-sensitivity and subgroup
consistency (Zheng) - Multidimensional Watts index
311.5 Testing robustness
- The three poverty curves
- 1. The poverty incidence curve
- H 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. - 2. The poverty depth curve
- area under poverty incidence curve
- Each point on this curve gives aggregate poverty
gap per capita. - 3. The poverty severity curve
- area under poverty depth curve
- Each point gives the squared poverty gap per
capita.
32First-order dominance test
- If the poverty incidence curve for A 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
A
B
What if the PICs intersect at some point lt
zmax? e.g., higher rice prices in Indonesia very
poor lose, those near the poverty line gain.
33Second-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). - 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 and the Watts index. -
341.6 Growth incidence curves
- Invert the CDF to obtain the quantile function
- Then calculate growth rates at each percentile to
give the growth incidence curve - Note that if the Lorenz curve does not change
then
35Example 1 China and India in 1990s
36But looked what happened in China around mid 1990s
37Example 2 Indonesia in a crisis
38Measuring the rate of pro-poor growth
Watts index for the level of poverty implies
using the mean growth rate of the poor in
measuring the rate of pro-poor economic growth.
(Not growth rate in the mean for the poor.)
Example Growth rates for China
391.7 Measuring the poverty impacts of policies
and programs
- Various measures of targeting performance
- SHARE the share of total payments going to those
with pre-transfer income yltz (or some fixed ) - Concentration index (CI) the area between the
concentration curve and the diagonal (along which
everyone receives the same amount). - SHARE normalized by headcount index
- Targeting differential (TD) is the difference
between the participation rate for the poor and
that for the non-poor
40However, better targeting does not imply a
higher impact on poverty
- There can be no guarantee that better targeting
by these measures will enhance a programs impact
on poverty - Coverage maters avoiding leakage to non-poor may
entail weak coverage of the poor. - Deadweight costs (incentive effects) e.g.,
income foregone by participants in workfare
programs - Political economy fine targeting can undermine
political support for anti-poverty programs -
41Example for Chinas Di Bao programImpacts on
poverty measured across 35 municipalities
Only the targeting differential has any
predictive power for poverty impacts!
42Better to focus directly on the poverty impact,
though decompositions help understand that impact
- For example, the impact of a targeted transfer
program on poverty (by any FGT measure) can be
decomposed into four components - (1) the budget outlay per capita
- (2) the extent of leakage to the non-poor
- (3) a vertical equity component and
- (4) a horizontal equity component.
- (Bibi and Duclos, 2005)
43 442.1 Static models of poverty
- For all additive measures we can decompose the
aggregate measure by sub-groups - e.g., urban vs rural, large vs small
households - The poverty profile can be thought of as a simple
model of poverty
Prob(y lt z)
Sub-group poverty measures (poverty profile)
45But this is too simple a model
- We would like to introduce a richer set of
covariates (some continuous) to - Account better for the variance in circumstances
leading to poverty - Disentangle which are the key factors, given
their inter-correlation. - For example
- poverty profile shows that rural incidence gt
urban incidence, and that poverty is greater for
those with least education. - But education is lower in rural areas.
- Is it lack of education or living in rural areas
that increases poverty?
46Multivariate poverty profiles
- Welfare indicator modeled as a function of
- multiple variables
-
- or
-
Fixed effects, one for each sub-group with a
different poverty line
47Probits for poverty make little sense
- Probit regression for poverty (normally
distributed error)
- However
- This is just an inefficient way of estimating
the OLS regression parameters. - You do not need a probit/logit when the
continuous variable is observed. - You can still estimate poverty impacts
- And under weaker assumptions (e.g., normality of
errors is not required)
482.2 Poverty mapping
- Impute measure of welfare (e.g. comprehensive
real consumption) from household survey into
census, using estimated static model -
- Note
- Constrained to using xs that are available in
the census - Cant have geographic fixed effects
- Cant allow for idiosyncratic local factors
- Standard errors can allow for these sources of
error -
492.3 Studying poverty dynamics using repeated
cross-sectional data
- Decomposing changes in poverty
- Decomposition 1 Growth versus redistribution
- Growth component holds relative inequalities
(Lorenz curve) constant redistribution component
holds mean constant - Change in poverty between two dates
- Change in poverty if distribution had not changed
-
- Change in poverty if the mean had not changed
-
- Interaction effects between growth and
redistribution
50Example for Brazil
- Poverty and inequality measures
Very little change in poverty rising inequality
51Example for Brazil
- Poverty and inequality measures
Very little change in poverty rising
inequality Decomposition
- No change in headcount index yet two strong
opposing effects growth (poverty reducing)
redistribution (poverty increasing). - Redistribution effect is dominant for PG and
SPG.
52- Decomposition 2 Gains within sectors vs
population shifts -
- Gains within sectors at given pop. shares
- Population shift effects hold initial poverty
measures constant - Interaction effects.
53Example urban-rural
54Example for China
- 75-80 of the drop in national poverty
incidence is accountable - to poverty reduction within the rural sector
- most of the rest is attributable to
urbanization of the population.
55Static models on repeated cross-sections
- Two time periods, or two sets of households
- How much has the change in poverty been due to
- Change in the joint distribution of the Xs?
- Change in the parameters (return to the Xs)?
- Example 1 in Vietnam, returns to education are
significantly higher for the majority ethnic
group than minorities - Example 2 in Bangladesh, returns to education
are higher in urban areas. Strong geographic
effects
562.4 Studying poverty dynamics using panel data
- PROT ("Protected") Change in proportion who
fell into poverty. - PROM ("Promotion") Change in proportion who
escaped poverty.
57Transient vs. chronic poverty
Measure of poverty for household i over dates
1,2,,D The transient component of poverty is
the part attributed to variability in
consumption The chronic component
is
58Models of transient and chronic poverty
Transient poverty model Chronic poverty
model
59Example for rural China
- Determinants of chronic poverty look quite
similar (though not identical) to that for total
poverty (chronic plus transient). - However, the determinants of transient poverty
measure are quite different. - Low foodgrain yields foster chronic poverty, but
are not a significant determinant of transient
poverty. - Higher variability over time in wealth is
associated with higher transient poverty but not
chronic poverty. - While smaller and better educated households have
lower chronic poverty, these things matter little
to transient poverty. - And living in an area with better attainments in
health and education reduces chronic poverty but
is irrelevant to transient poverty. -
- Different models are determining chronic versus
transient poverty in rural China.
602.5 Micro growth models
- With panel data we can also investigate why some
households do better than others over time. - Initial conditions (incl. geographic variables)
- Shocks
- Policies
- Examples of the questions that can be addressed
- Are there geographic poverty traps?
- Does where you live matter independently of
individual (non-geographic) characteristics? Poor
areas or just poor people? - Are there genuine externalities in rural
development? - Does this help explain under-development
(under-investment in the externality-generating
activities)
61Micro growth models cont.,
- Micro model of the growth process
- Latent heterogeneity in growth process can be
dealt with allowing for time varying effects - Quasi-differencing to eliminate the fixed effect
62Example for China
- Micro growth model estimated on six-year
household panel (Jalan-Ravallion) - Consumption growth at the household level is a
function of household characteristics and
geographic characteristics. - Publicly provided goods, such as rural roads,
generate non-negligible gains in consumption
relative to the poverty line. - And since latent geographic effects included,
these effects cannot be ascribed to endogenous
program placement. - Convergent effects of private wealth divergent
effects of local geographic wealth -
- gt Geographic poverty traps
63Example for China Geographic poverty traps
ggt0
glt0
- The results strengthen the equity and efficiency
case for public investment in lagging poor areas
in this setting.