实验经济学中带协变量调整的多重假设检验

Multiple testing with covariate adjustment in experimental economics

Journal of Applied Econometrics · 2023
被引 32 · 同刊同年前 6%
人大 AABS 3

中文导读

提出一种在实验经济学中同时检验多个零假设的方法,利用协变量信息提高统计功效,并控制族系错误率。

Abstract

Summary This paper provides a framework for testing multiple null hypotheses simultaneously using experimental data in which simple random sampling is used to assign treatment status to units. Using general results from the multiple testing literature, we develop under weak assumptions a procedure that (i) asymptotically controls the familywise error rate—the probability of one or more false rejections—and (ii) is asymptotically balanced in that the marginal probability of rejecting any true null hypothesis is approximately equal in large samples. Our procedure improves upon classical methods by incorporating information about the joint dependence structure of the test statistics when determining which null hypotheses to reject, leading to gains in power. An important point of departure from prior work is that we exploit observed, baseline covariates to obtain further gains in power. The precise way in which we incorporate these covariates is based on recent results from the statistics literature in order to ensure that inferences are typically more powerful in large samples.

多重假设检验协变量调整实验经济学族系错误率