Title: Microfinance Impact
1Microfinance Impact What are we trying to
measure? How can we accurately evaluate the
impact of microfinance? Attempts to measure
impact thus far?
2- Microfinance may impact households in various
ways via income for example - Income effect
- ? ?demand for children
- ? ?health
- ? ?childrens education
- ? ?leisure
- Substitution effect
- ??demand for children (i.e., womens opportunity
cost increases) - ??childrens education
- ??leisure
3- Other channels
- Womens bargaining power
- Social capital
- And, more direct interventions via services added
to financial services - Education and training (i.e., Freedom for Hunger,
Pro Mujer, BRAC) - Health (i.e., Health Banks)
4- Lets Narrow- down our search impact on income
- Attributes
- Measurable age, education, experience..
- Non-measurable entrepreneurial organizational
skills, valuable - networks.
- Challenge disentangling the role of
microfinance from measurable - and non-measurable attributes
- Challenge even greater when the decision to
participate in a - microfinance program depend on those same
attributes
5T2 T1 compared with C2 C1 difference-in-diffe
rence approach
6- Problems
- Make sure that control groups are comparable to
treatment groups - ? need to consider who joins the microfinance
program that cannot be - compared to those who do not
- Why?
- Unmeasured attributes (i.e., entrepreneurial
ability of those who join) - ? selection bias
- Potential solution consider a similar village
without microfinance - Problem again, unmeasured attributes of
villagers that have not yet self - selected themselves
- ?selection bias
7- Well-known attempts
- Bret Coleman (1999) (2002) on Thailand
- Tries to address the selection bias by
identifying potential borrowers in villages where
microfinance is not yet present - In particular
- He gathers data in 1995 from 14 villages, 8 of
which already have a microfinance program in
operation, and the other 6 do not but would-be
borrowers have already been identified - Estimates
8- Findings
- After controlling for selection and program
placement - - Impact not significantly different from zero
- - Some impact for the wealthier participants
- However Thailand is relatively wealthy, village
members have - multiple sources of credit .
9- Karlan (2001) on Peru
- Comparing old borrowers with new borrowers
using cross sectional - Data
- ?selection bias due to the timing of entry (early
entrants may differ from late - entrants, i.e., more entrepreneurial, more
motivated..) - And Karlans experience in FINCA Peru, points out
two additional biases, - both due to dropouts
- 1)Dropouts may be the failures ? impact is
overstated, or vice versa - 2) Non random attrition If dropouts are
failures ? pool of borrowers are - richer on average ? impact overstated, and vice
versa - Potential solutions Hunt down the drop outs
which is expensive, or estimate - predictors which has a problem in that the
reweighing scheme does not - take into account the size of the impact
10- USAID AIMS on India, Peru, and Zimbabwe
- Use data collected at several points in time
allowing for before versus after - comparisons
- Control for nonrandom participation and
nonrandom placement - However, approach subject to biases due to
unobservable attributes that change over time - Nevertheless
- Data collected from a random sample of
participant households in several programs that
were resurveyed two years later - As for the control groups random sample from
nonparticipants ( India and Peru) - Or
- A random walk (Zimbabwe)
11- Researchers followed dropouts to avoid attrition
biases - However
- Researchers decided against analyzing difference-
in differences - ? Biases due to omitted variables that do not
change over time - In particular, researchers should have estimated
- Yijt Xijt a Vj ß? Mij ? Cijt d ?ijt,
(8.2) - ? Problem Potential bias due to omission of
unobservable variables - that do not change over time
12- Addressing the problem
- Yijt1 Xijt1 a Vj ß? Mij ? Cijt1 d
?ijt1 (8.3) - And, subtract (8.2) from (8.3) to obtain
- ? Yij ? Xij a ? Cij d ? ?ij, (8.4)
- ? a consistent estimate of the impact of d
- Additional problem reverse causality
13BANGLADESH
Population 143.8 million Urban 23.9
million HDI Rank 138 Adult illiteracy
58.9 Population lt 1 36.0 million Largest
Microfinance Programs 98 Grameen, BRAC,
RD-12 Serving the landless rural poor
14Pitt and Khandker (1998)
- Attempt to measure the impact of microfinance
participation, by gender on - - boys and girls schooling
- - household expenditures (consumption)
- - accumulation on non land assets
- - womens and mens labor supply
-
-
15Cross Section Data
- 1,798 households in 87 villages were surveyed in
1992 - 905 households were under a microfinance program?
treatment - 893 households were not ? control
- Results
- Relative to credit provided to men, credit
provided to women - (a) ?Schooling (both boys and girls)
- (b) ?Household expenditures (consumption)
- (c) ?Non-land assets held by women
- (d) ?Labor supply of men and women
16Basic insight
17Problem
- How to address the biases?
- Find an IV a variable that explains levels of
credit received but has no direct relationship
with the outcomes of interest - In this case Schooling, Household Expenditures,
Non Land Assets, - Labor supply
- An eligibility rule only functionally
landless households (with lt ½ of land) can have
access to microfinance - The fact that there ineligible households (260)
within villages with programs ? there is another
control group which helps to alleviate the bias
18An improved estimation strategy
- Compare
- Treatment with ineligible households living in
the same village - Ineligible with would be eligible
- ? households with access to microfinance are
doing better than their ineligible neighbors
relative to the difference in outcomes between
functionally landless households in control
villages versus their ineligible neighbors
19- Yij Xij a Vj ß? Eij ? (Tij Eij) d
?ij, (8.5) - Disappointing results w/r to impact on household
consumption - But
- Microfinance helps to diversify income streams so
that consumption is less variable across seasons - Also
- Landholdings may not be exogenous
- On the other hand
- Successful borrowers were buying land ? may
explain why no impact on household consumption ? - Moreover, debate over ineligible households that
participated (25). But Pitt-Khandker (1999)
acknowledged the problem, made robustness checks
and show that their results change very little ?
20Note that
- Yij Xij a Vj ß? Eij ? Cij d
?ij, (8.6) - Where
- d captures credit access
- Now, by expanding the set of instruments to Xij
Tij Eij - ? there are as many instruments as there are X
(education.) - ? d takes advantage of variation of how much
credit households receive
21Now, when comparing groups of men with groups of
women
- Pitt-Khandker (1998) most cited result
- For every 100 taka lent to a woman consumption ?
18 taka - For every 100 taka lent to a man consumption ?11
taka - Now, another round of data was collected in 1998
1999 - And Khandker (2003) look at some trends
2220 per cent poverty decline both participants and
nonparticipants Pessimists decline would have
happened even without microfinance Optimists
impact of microfinance has had positive
spillovers to nonparticipants
23Khandkers (2003) econometric estimates show that
- Microfinance contributed to roughly ½ of the 20
percentage points decline in poverty - For every 100 taka lent to a woman consumption ?8
taka - Ideally, another round of data collection should
help - Problem microfinance in Bangladesh has spread
far and wide - ? No more control groups!!!
-