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Program Evaluation 2

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Whether an individual participates in a program is usually determined at least ... gubernatorial elections as an instrumental variable. Is this instrument valid? ... – PowerPoint PPT presentation

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Title: Program Evaluation 2


1
Program Evaluation (2)
Feng ,Jin Fudan University
2
Method of Instrumental Variables
3
The Problem
  • Whether an individual participates in a program
    is usually determined at least in part by
    unobserved variables that also affect outcomes of
    interest.
  • These unobserved variables affect the outcome and
    also are correlated with whether an individual
    participates in the program.

4
Selection Bias
  • Participants and non-participants outcomes
    differ even if the program is ineffective.
  • If we can describe the selection process, we can
    control for pre-existing differences in
    outcomes between the two groups.
  • Selection on observables

5
Selection Bias
  • Unobserved attributes likely lead to differences
    between the two groups.
  • Selection on unobservables

6
Solution
  • Consider the participation equation
  • Di ?0 ? 1Zi ui
  • The variable (vector) Zi is an instrumental
    variable

7
Instrumental Variable
  • Find some variable(s) Zi that is
  • (1) Correlated with whether an individual
    participates in the program.
  • (2) Uncorrelated with the unobserved variables in
    the outcome equation.
  • More formally, we express these ideas as follows
  • E(Di, Zi ) is not equal to zero.
  • E(Zi, ?i) 0

8
Example Workforce Development Policy
  • Some individuals receive training and others do
    not.
  • Consider the variable indicating whether a person
    is randomly offered the opportunity to
    participate in a government training program.
  • The random offer of training is an instrument
  • Offer is highly correlated with receipt of
    training.
  • Offer is uncorrelated with the determinants of
    earnings and other outcomes of interest.

9
Example The Effects of Military Service
  • For different U.S. generations military service
    is associate with either higher or lower lifetime
    earnings.
  • Problem A persons veteran status is correlated
    with other determinants of earnings.
  • Instrument Randomly drawn draft lottery
    number.
  • Why is this variable a good instrumental variable?

10
Wald estimates
  • Regress Di ?0 ? 1Zi ui
  • Compute Di or the predicted value of Di
  • Regress Yi b0 ?1Di ?i

Wald estimator is an important and
easily-analyzed IV estimator
11
Why wald estimator works
  • Consider the results of the first stage
    regression
  • Predicted participation, Di, is given by
  • Di ?0 ?1Zi.
  • The residual is given by
  • ui Di - ? 0 - ? 1Zi Di - Di.
  • We now can express the participation variable in
    terms of the correlated and uncorrelated
    parts.

12
Wald estimates
  • We want to use only movements in the
    participation variable that are uncorrelated with
    the unobserved determinants of the outcomes of
    interest.
  • Express the participation variable as
  • Di Di ui.
  • Regress the outcome on the predicted
    participation
  • Yi b0 ?1 Di (? 1ui ei ).

13
  • The spirit of OLS is to compare outcomes of Y for
    high D vs low D
  • The spirit of IV is to compare outcomes of Y for
    high Z vs low Z
  • The regression of outcome on the instruments Z is
    called the reduced form
  • The reason for a causal interpretation is

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16
Angrist (1990)
  • The Wald estimator is based solely on earnings
    differences by draft-eligibility status
  • A more efficient estimator exploits all the
    information using observations on mean earnings
    for each group of five consecutive numbers

17
More efficient estimator
18
2SLS
  • First stage
  • To run regression, to obtain the fitted value of
    D, which is D
  • Second stage
  • OLS regression on D and X

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20
IV example
  • Levitt (1997) what is the effect of increasing
    the police force
  • on the crime rate?
  • This is a classic case of simultaneous causality
    (high crime areas
  • tend to need large police forces) resulting in an
    incorrectly-
  • signed (positive) coefficient
  • To address this problem, Levitt uses the timing
    of mayoral and
  • gubernatorial elections as an instrumental
    variable
  • Is this instrument valid?
  • Relevance police force increases in election
    years
  • Exogeneity election cycles are pre-determined

21
IV example
  • Two-stage least squares
  • Stage 1 Decompose police hires into the
    component that can
  • be predicted by the electoral cycle and the
    problematic
  • component
  • policei ?0 ?1 electioni ?i
  • Stage 2 Use the predicted value of policei from
    the first-stage
  • regression to estimate its effect on crimei
  • crimei ?0 ?1 police-hati ?i
  • Finding an increased police force reduces
    violent crime
  • (but has little effect on property crime)

22
IV number of instruments
  • There must be at least as many instruments as
    endogenous
  • regressors
  • Let k number of endogenous regressors
  • m number of instruments
  • The regression coefficients are
  • exactly identified if mk (OK)
  • overidentified if mgtk (OK)
  • underidentified if mltk (not OK)

23
Angrist Krueger, 1991Does compulsory schooling
attendance affect schooling and earnings
24
Angrist Krueger, 1991
25
Angrist Krueger, 1991
26
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27
IV testing instrument relevance
  • How do we know if our instruments are valid?
  • Recall our first condition for a valid
    instrument
  • 1. Relevance corr (Zi , Di) ? 0
  • Stock and Watsons rule of thumb the first-stage
    F-statistic
  • testing the hypothesis that the coefficients on
    the instruments
  • are jointly zero should be at least 10 (for a
    single endogenous
  • regressor)
  • A small F-statistic means the instruments are
    weak (they
  • explain little of the variation in D) and the
    estimator is biased

28
IV testing instrument exogeneity
  • Recall our second condition for a valid
    instrument
  • 2. Exogeneity corr (Zi , ?i) 0
  • If you have the same number of instruments and
    endogenous
  • regressors, it is impossible to test for
    instrument exogeneity
  • But if you have more instruments than regressors
  • Overidentifying restrictions test regress the
    residuals from
  • the 2SLS regression on the instruments (and any
    exogenous
  • control variables) and test whether the
    coefficients on the
  • instruments are all zero

29
Over-identification test
  • When there are more instruments more than the
    number of endogenous variables, there are two
    tests

30
IV pitfalls
  • the validity of instruments
  • The possibility that ?i and Zi are correlated
  • Weak IV
  • a. IVs are said to be weak when the endogenous
    regressor that depends on the IVs is small
  • b. Measured by the first stage R2 and F
    statistics
  • c. IVs can be weak and F-statistic small either
    because coefficients of IV are close to zero or
    variability of IVs is low

31
Example of weak IVs
  • Angust and Krueger (1991)

32
The effect of weak IVs
  • The bias is more than OLS
  • The effect of weak IV depends considerably on the
    degree of endogeneity and the concentration
    parameter
  • Other things equal, more instruments, smaller
    samples, and weaker instruments each mean more
    bias

33
Average Treatment EffectLocal average treatment
effect
  • Average Treatment Effect (ATE)
  • E(Y1-Y0 X)
  • Treatment on Treated (TT)
  • E(Y1-Y0 X, D1)
  • Treatment on un-Treated (TUT)
  • E(Y1-Y0 X, D0)
  • Local Average Treatment Effect (LATE)
  • E(Y1-Y0 X, D (z) 1, D (z)0)

Y1 is value of Y (outcome--say earnings) for
treated (e.g. job training) Y0 is value of Y
(outcome) for those who do not receive
treatment D1 if person receives treatment D0 if
person does not receive treatment
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