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Assessing the Performance of Nonexperimental Estimators for Evaluating Head Start

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  • Andrew S. Griffen
  • Petra E. Todd

Abstract

This paper uses experimental data from the Head Start Impact Study (HSIS) combined with nonexperimental data from the Early Childhood Longitudinal Study–Birth Cohort (ECLS-B) to study the performance of nonexperimental estimators for evaluating Head Start program impacts. The estimators studied include parametric cross-section and difference-in-differences regression estimators and nonparametric cross-section and difference-in-differences matching estimators. The estimators are used to generate program impacts on cognitive achievement test scores, child health measures, parenting behaviors, and parent labor market outcomes. Some of the estimators closely reproduce the experimental results, but a priori it would be difficult to know whether the estimator works well for any particular outcome. Pre-program exogeneity tests eliminate some outcomes and estimators with the worst biases, but estimators/outcomes with substantial biases pass the tests. The difference-in-differences matching estimator exhibits the best performance in terms of low bias values and capturing the pattern of statistically significant treatment effects. However, the variation in bias is greater across outcomes examined than across methods.

Suggested Citation

  • Andrew S. Griffen & Petra E. Todd, 2017. "Assessing the Performance of Nonexperimental Estimators for Evaluating Head Start," Journal of Labor Economics, University of Chicago Press, vol. 35(S1), pages 7-63.
  • Handle: RePEc:ucp:jlabec:doi:10.1086/691726
    DOI: 10.1086/691726
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    Cited by:

    1. Sauermann, Jan & Stenberg, Anders, 2020. "Assessing Selection Bias in Non-Experimental Estimates of the Returns to Workplace Training," IZA Discussion Papers 13789, Institute of Labor Economics (IZA).
    2. Chan, M. & Dalla-Zuanna, A. & Liu, K., 2023. "Understanding Program Complementarities: Estimating the Dynamic Effects of Head Start with Multiple Alternatives," Cambridge Working Papers in Economics 2330, Faculty of Economics, University of Cambridge.
    3. David Rhys Bernard & Gharad Bryan & Sylvain Chabé-Ferret & Jonathan de Quidt & Jasmin Claire Fliegner & Roland Rathelot, 2023. "How Much Should We Trust Observational Estimates? Accumulating Evidence Using Randomized Controlled Trials with Imperfect Compliance," Working Papers 976, Queen Mary University of London, School of Economics and Finance.

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