Unbiased Causal Inference From an Observational Study: Results of a Within-Study Comparison
- 1 December 2009
- journal article
- Published by American Educational Research Association (AERA) in Educational Evaluation and Policy Analysis
- Vol. 31 (4), 463-479
- https://doi.org/10.3102/0162373709343964
Abstract
Adjustment methods such as propensity scores and analysis of covariance are often used for estimating treatment effects in nonexperimental data. Shadish, Clark, and Steiner used a within-study comparison to test how well these adjustments work in practice. They randomly assigned participating students to a randomized or nonrandomized experiment. Treatment effects were then estimated in the experiment and compared to the adjusted nonexperimental estimates. Most of the selection bias in the nonexperiment was reduced. The present study replicates the study of Shadish et al. despite some differences in design and in the size and direction of the initial bias. The results show that the selection of covariates matters considerably for bias reduction in nonexperiments but that the choice of analysis matters less.Keywords
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