A generalized Fourier approach to estimating the null parameters and proportion of non-null effects in large-scale multiple testing
Jiashun Jin, Jie Peng, Pei Wang

TL;DR
This paper introduces a generalized Fourier method for estimating null parameters and the proportion of non-null effects in large-scale multiple testing, addressing scenarios with unknown null means and variances.
Contribution
It extends previous Fourier-based methods to handle unknown null means and variances, improving estimation in diverse large-scale testing situations.
Findings
Method performs well in theory
Effective in simulated data
Handles broader scenarios than previous methods
Abstract
In a recent paper (Efron (2004)), Efron pointed out that an important issue in large-scale multiple hypothesis testing is that the null distribution may be unknown and need to be estimated. Consider a Gaussian mixture model, where the null distribution is known to be normal but both null parameters--the mean and the variance--are unknown. We address the problem with a method based on Fourier transformation. The Fourier approach was first studied by Jin and Cai (2007), which focuses on the scenario where any non-null effect has either the same or a larger variance than that of the null effects. In this paper, we review the main ideas in Jin and Cai (2007), and propose a generalized Fourier approach to tackle the problem under another scenario: any non-null effect has a larger mean than that of the null effects, but no constraint is imposed on the variance. This approach and that in…
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Taxonomy
TopicsStatistical Methods in Clinical Trials · Statistical Methods and Bayesian Inference · Optimal Experimental Design Methods
