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2017
DOI: 10.2139/ssrn.3063316
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Outliers in Semi-Parametric Estimation of Treatment Effects

Abstract: Average treatment e↵ects estimands can present significant bias under the presence of outliers. Moreover, outliers can be particularly hard to detect, creating bias and inconsistency in the semi-parametric ATE estimads. In this paper, we use Monte Carlo simulations to demonstrate that semi-parametric methods, such as matching, are biased in the presence of outliers. Bad and good leverage points outliers are considered. The bias arises because bad leverage points completely change the distribution of the metric… Show more

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