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Studying the Mean and Variation in the Effect of Program Participation in Multi-site Trials The research reported here was supported by a grant from the W.T. Grant Foundation to the University of Chicago entitled “ Building Capacity for Evaluating Group-Level Interventions. ” Thanks to Takako Nomi for her collaboration on these ideas.
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Outline 1.Pervasiveness of Multi-site trials Non-compliance 2.Potential outcomes framework Observed data Potential outcomes Causal effects 3. Instrumental variables in a single-site study Under homogeneity of impact Under heterogeneity of impact Complier-Average Causal Effect (CACE) 4. Instrumental variables in multi-site studies –Estimating the Average CACE –Estimating the Variation in CACE
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1. Non-compliance in Multi-Site Trials Examples * National Head Start Evaluation (US Dept of HHS, 2010) * Moving to Opportunity (Sonbanmatsu, Kling, Duncan, Brooks Gunn, 2006) * School-based lottery studies ( Abdulkadiroglu, Angrist, Dynarski, Kane, and Pathak, 2009 ). * Tennessee STAR (Finn and Achilles, 1990) * Double-Dose Algebra (Nomi and Allensworth, 2009) * Small Schools of Choice (MDRC)
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2. Observed Data (Single Site) Observed variables
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2. Potential Outcomes and Causal Effects
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2. Average Causal Effects
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What happens if impacts are heterogeneous?
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Single site, heterogeneous treatment effects
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Assume away “Compliance-Effect Covariance”??
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Alternative Approach for binary M “Complier Average Causal Effect” (CACE) or “Local Average Treatment Effect” (Bloom, 1984; Angrist, Imbens, and Rubin, 1996)
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Principal Stratification (Frangakis and Rubin, 2002) Stratum M(1)M(0)Ф=M(1)-M(0)Y(M(1))-Y(M(0))Fraction of pop Average Effect Compliers 101Y(1)-Y(0) π compliers δ compliers Always- takers 110Y(1)-Y(1)=0 π always 0 Never- takers 000Y(0)-Y(0)=0 π never 0 Defiers 01Y(0)-Y(1)00
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Complier-average causal effect
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In Sum We can estimate the Population-Average Effect of Participating if we assume Cov( Φ, Δ)=0 We can estimate CACE if we assume Pr( Φ ≥0)=1 The latter is a much weaker assumption
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2. Causal Effects in Multi-site Trials
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Multiple Sites: Causal Effects
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Combine 2 ITT analyses Step 1: Estimate the Impact of Treatment Assignment on the Outcome Results
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Step 2: Estimate the Impact of Treatment Assignment on Program Participation Results
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Step 3: Combine Results: mean
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Step 3: Combine Results: variance
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In sum True Values Our estimates
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