Authors
Alberto Abadie, Jann Spiess
Publication date
2022/4/3
Journal
Journal of the American Statistical Association
Volume
117
Issue
538
Pages
983-995
Publisher
Taylor & Francis
Description
Nearest-neighbor matching is a popular nonparametric tool to create balance between treatment and control groups in observational studies. As a preprocessing step before regression, matching reduces the dependence on parametric modeling assumptions. In current empirical practice, however, the matching step is often ignored in the calculation of standard errors and confidence intervals. In this article, we show that ignoring the matching step results in asymptotically valid standard errors if matching is done without replacement and the regression model is correctly specified relative to the population regression function of the outcome variable on the treatment variable and all the covariates used for matching. However, standard errors that ignore the matching step are not valid if matching is conducted with replacement or, more crucially, if the second step regression model is misspecified in the sense indicated …
Total citations
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Scholar articles
A Abadie, J Spiess - Journal of the American Statistical Association, 2022