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The Elephant in the Corner: A Cautionary Tale About Measurement Error in Treatment Effects ModelsDaniel L. MillimetSouthern Methodist University (SMU) - Department of Economics; Institute for the Study of Labor (IZA) IZA Discussion Paper No. 5140 Abstract: Researchers in economics and other disciplines are often interested in the causal effect of a binary treatment on outcomes. Econometric methods used to estimate such effects are divided into one of two strands depending on whether they require the conditional independence assumption (i.e., independence of potential outcomes and treatment assignment conditional on a set of observable covariates). When this assumption holds, researchers now have a wide array of estimation techniques from which to choose. However, very little is known about their performance - both in absolute and relative terms - when measurement error is present. In this study, the performance of several estimators that require the conditional independence assumption, as well as some that do not, are evaluated in a Monte Carlo study. In all cases, the data-generating process is such that conditional independence holds with the 'real' data. However, measurement error is then introduced. Specifically, three types of measurement error are considered: (i) errors in treatment assignment, (ii) errors in the outcome, and (iii) errors in the vector of covariates. Recommendations for researchers are provided.
Number of Pages in PDF File: 40 Keywords: treatment effects, propensity score, unconfoundedness, selection on observables, measurement error JEL Classification: C21, C52 working papers seriesDate posted: August 30, 2010Suggested CitationContact Information
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