Large-scale multiple testing of composite null hypotheses under heteroskedasticity
成果类型:
Article
署名作者:
Gang, B.; Banerjee, T.
署名单位:
Fudan University; University of Kansas
刊物名称:
BIOMETRIKA
ISSN/ISSBN:
0006-3444
DOI:
10.1093/biomet/asaf007
发表日期:
2025
关键词:
false discovery rate
EMPIRICAL BAYES
ORACLE
摘要:
Heteroskedasticity poses several methodological challenges in designing valid and powerful procedures for simultaneous testing of composite null hypotheses. In particular, the conventional practice of standardizing or rescaling heteroskedastic test statistics in this setting may severely affect the power of the underlying multiple testing procedure. Additionally, when the inferential parameter of interest is correlated with the variance of the test statistic, methods that ignore this dependence may fail to control the Type I error at the desired level. We propose a new heteroskedasticity-adjusted multiple testing procedure that avoids data reduction by standardization and directly incorporates the side information from the variances into the testing procedure. Our approach relies on an improved nonparametric empirical Bayes deconvolution estimator that offers a practical way of capturing the dependence between the inferential parameter of interest and the variance of the test statistic. We develop theory to establish that the proposed procedure is asymptotically valid and optimal for false discovery rate control. Simulation results demonstrate that our method outperforms existing procedures, with substantial power gains across many settings at the same false discovery rate level. The method is illustrated with an application involving the detection of engaged users on a mobile game app.