At What Level Should One Cluster Standard Errors in Paired and Small-Strata Experiments?
成果类型:
Article
署名作者:
de Chaisemartin, Clement; Ramirez-Cuellar, Jaime
署名单位:
Institut d'Etudes Politiques Paris (Sciences Po); Microsoft
刊物名称:
AMERICAN ECONOMIC JOURNAL-APPLIED ECONOMICS
ISSN/ISSBN:
1945-7782
DOI:
10.1257/app.20210252
发表日期:
2024
页码:
193-212
关键词:
randomized experiments
robust
DESIGN
摘要:
In matched pairs experiments in which one cluster per pair of clusters is assigned to treatment, to estimate treatment effects, researchers often regress their outcome on a treatment indicator and pair fixed effects, clustering standard errors at the unit -of -randomization level. We show that even if the treatment has no effect, a 5 percentlevel t -test based on this regression will wrongly conclude that the treatment has an effect up to 16.5 percent of the time. To fix this problem, researchers should instead cluster standard errors at the pair level. Using simulations, we show that similar results apply to clustered experiments with small strata. (JEL C21, C90, G21, O16, O18)
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