Optimal False Discovery Rate Control for Large Scale Multiple Testing with Auxiliary Information

03/29/2021
by   HongYuan Cao, et al.
0

Large-scale multiple testing is a fundamental problem in high dimensional statistical inference. It is increasingly common that various types of auxiliary information, reflecting the structural relationship among the hypotheses, are available. Exploiting such auxiliary information can boost statistical power. To this end, we propose a framework based on a two-group mixture model with varying probabilities of being null for different hypotheses a priori, where a shape-constrained relationship is imposed between the auxiliary information and the prior probabilities of being null. An optimal rejection rule is designed to maximize the expected number of true positives when average false discovery rate is controlled. Focusing on the ordered structure, we develop a robust EM algorithm to estimate the prior probabilities of being null and the distribution of p-values under the alternative hypothesis simultaneously. We show that the proposed method has better power than state-of-the-art competitors while controlling the false discovery rate, both empirically and theoretically. Extensive simulations demonstrate the advantage of the proposed method. Datasets from genome-wide association studies are used to illustrate the new methodology.

READ FULL TEXT

page 38

page 42

research
03/29/2016

Online Rules for Control of False Discovery Rate and False Discovery Exceedance

Multiple hypothesis testing is a core problem in statistical inference a...
research
02/15/2021

Controlling False Discovery Rates Using Null Bootstrapping

We consider controlling the false discovery rate for many tests with unk...
research
10/06/2022

Probabilistic Model Incorporating Auxiliary Covariates to Control FDR

Controlling False Discovery Rate (FDR) while leveraging the side informa...
research
08/16/2023

False Discovery Rate Control for Lesion-Symptom Mapping with Heterogeneous data via Weighted P-values

Lesion-symptom mapping studies provide insight into what areas of the br...
research
12/17/2022

Inference with approximate local false discovery rates

Efron's two-group model is widely used in large scale multiple testing. ...
research
04/29/2021

Querying multiple sets of p-values through composed hypothesis testing

Motivation: Combining the results of different experiments to exhibit co...
research
05/11/2018

False Discovery Rate Control Under Reduced Precision Computation

The mitigation of false positives is an important issue when conducting ...

Please sign up or login with your details

Forgot password? Click here to reset