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Quasi Experimental Methods I Nethra Palaniswamy Development Strategy and Governance International Food Policy Research Institute
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What we know so far Aim: We want to isolate the causal effect of our interventions on our outcomes of interest Use rigorous evaluation methods to answer our operational questions Randomizing the assignment to treatment is the “gold standard” methodology (simple, precise, cheap) What if randomization is not feasible? >> Where it makes sense, resort to non-experimental methods
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When does it make sense? Can we find a plausible counterfactual? Every non-experimental method is associated with a set of assumptions Assumptions about plausible counterfactual The stronger the assumptions, the more doubtful our measure of the causal effect Question assumptions ▪ Are these assumptions valid?
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Example: Funds for community infrastructure Principal Objective ▪ Improving community infrastructure- primary schools Intervention ▪ Community grants ▪ Non-random assignment Target group ▪ Communities with poor education infrastructure ▪ Communities with high poverty rates Main result indicator ▪ Primary school enrolment
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5 (+) Impact of the program (+) Impact of external factors Illustration: Funds for Community Infrastructure(1)
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6 (+) BIASED Measure of the program impact Before-After comparisons
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7 « After » Difference between participants and non-participants Before-After comparisons for participating and non-participating communities « Before» Difference between participants and non-participants >> What’s the impact of our intervention?
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Difference-in-Differences Identification Strategy (1) Counterfactual: 2 Formulations that say the same thing 1. Non-participants’ enrolments after the intervention, accounting for the “before” difference between participants/nonparticipants (the initial gap between groups) 2. Participants’ enrolments before the intervention, accounting for the “before/after” difference for nonparticipants (the influence of external factors) 1 and 2 are equivalent
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Difference-in-Differences Identification Strategy (2) Underlying assumption: Without the intervention, enrolments for participants and non participants’ would have followed the same trend >> Participating communities and non- partipating communities would have behaved in the same way on average, in the absence of the intervention
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Data -- Example 1
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NP 2008 -NP 2007 =10.8 Impact = (P 2008 -P 2007 ) -(NP 2008 -NP 2007 ) = 10.6 – 10.8 = -0.2 Impact = (P 2008 -P 2007 ) -(NP 2008 -NP 2007 ) = 10.6 – 10.8 = -0.2 P 2008 -P 2007 =10.6
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P-NP 2008 =0.5 Impact = (P-NP) 2008 -(P-NP) 2007 = 9.3 - 9.5 = -0.2 Impact = (P-NP) 2008 -(P-NP) 2007 = 9.3 - 9.5 = -0.2 P-NP 2007 =0.7
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Summary Negative Impact: Very counter-intuitive: Funding for building primary schools should not decrease enrolment rates once external factors are accounted for! Assumption of same trend very strong 2 sets of communities groups had, in 2007, different pre- existing characteristics and different paths Non-participating communities would have had slower increases in enrolment in the absence of funds for building primary schools ➤ Question the underlying assumption of same trend! ➤ When possible, test assumption of same trend with data from previous years
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Questioning the Assumption of same trend: Use pre-pr0gram data >> Reject counterfactual assumption of same trends !
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Data – Example 2
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NP 08 -NP 07 =0.2 Impact = (P 2008 -P 2007 ) -(NP 2008 -NP 2007 ) = 0.6 – 0.2 = + 0.4 Impact = (P 2008 -P 2007 ) -(NP 2008 -NP 2007 ) = 0.6 – 0.2 = + 0.4
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Impact = (P 2008 -P 2007 ) -(NP 2008 -NP 2007 ) = 0.6 – 0.2 = + 0.4 Impact = (P 2008 -P 2007 ) -(NP 2008 -NP 2007 ) = 0.6 – 0.2 = + 0.4
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Conclusion Positive Impact: More intuitive Is the assumption of same trend reasonable? ➤ Still need to question the counterfactual assumption of same trends ! ➤ Use data from previous years
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Questioning the Assumption of same trend: Use pre-pr0gram data >>Seems reasonable to accept counterfactual assumption of same trend ?!
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Caveats (1) Assuming same trend is often problematic No data to test the assumption Even if trends are similar the previous year… ▪ Where they always similar (or are we lucky)? ▪ More importantly, will they always be similar? ▪ Example: Other project intervenes in our nonparticipating communities…
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Caveats (2) What to do? >> Check similarity in observable characteristics ▪ If not similar along observables, chances are trends will differ in unpredictable ways >> Still, we cannot check what we cannot see… And unobservable characteristics might matter more than observable (social cohesion, community participation)
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Matching Method + Difference-in- Differences (1) Match participants with non-participants on the basis of observable characteristics Counterfactual: Matched comparison group Each program participant is paired with one or more similar non-participant(s) based on observable characteristics >> On average, participants and nonparticipants share the same observable characteristics (by construction) Estimate the effect of our intervention by using difference-in-differences
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Matching Method (2) Underlying counterfactual assumptions After matching, there are no differences between participants and nonparticipants in terms of unobservable characteristics AND/OR Unobservable characteristics do not affect the assignment to the treatment, nor the outcomes of interest
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How do we do it? Design a control group by establishing close matches in terms of observable characteristics Carefully select variables along which to match participants to their control group So that we only retain ▪ Treatment Group: Participants that could find a match ▪ Comparison Group: Non-participants similar enough to the participants >> We trim out a portion of our treatment group!
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Implications In most cases, we cannot match everyone Need to understand who is left out Example Score Nonparticipants Participants Matched Individuals Average incomes Portion of treatment group trimmed out
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Conclusion (1) Advantage of the matching method Does not require randomization
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Conclusion (2) Disadvantages: Underlying counterfactual assumption is not plausible in all contexts, hard to test ▪ Use common sense, be descriptive Requires very high quality data: ▪ Need to control for all factors that influence program placement/outcome of choice Requires significantly large sample size to generate comparison group Cannot always match everyone…
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Summary Randomized-Controlled-Trials require minimal assumptions and procure intuitive estimates (sample means!) Non-experimental methods require assumptions that must be carefully tested More data-intensive Not always testable Get creative: Mix-and-match types of methods! Address relevant questions with relevant techniques
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