Synthetic-Powered Multiple Testing with FDR Control
AI 摘要
SynthBH方法利用合成数据提升FDR控制的多重假设检验效率。
主要贡献
- 提出SynthBH方法,融合真实和合成数据进行多重假设检验
- 证明了在PRDS条件下SynthBH的FDR控制
- SynthBH能适应不同质量的合成数据
方法论
提出SynthBH,一种基于合成数据的多重假设检验过程,利用真实和合成数据的p值进行加权。
原文摘要
Multiple hypothesis testing with false discovery rate (FDR) control is a fundamental problem in statistical inference, with broad applications in genomics, drug screening, and outlier detection. In many such settings, researchers may have access not only to real experimental observations but also to auxiliary or synthetic data -- from past, related experiments or generated by generative models -- that can provide additional evidence about the hypotheses of interest. We introduce SynthBH, a synthetic-powered multiple testing procedure that safely leverages such synthetic data. We prove that SynthBH guarantees finite-sample, distribution-free FDR control under a mild PRDS-type positive dependence condition, without requiring the pooled-data p-values to be valid under the null. The proposed method adapts to the (unknown) quality of the synthetic data: it enhances the sample efficiency and may boost the power when synthetic data are of high quality, while controlling the FDR at a user-specified level regardless of their quality. We demonstrate the empirical performance of SynthBH on tabular outlier detection benchmarks and on genomic analyses of drug-cancer sensitivity associations, and further study its properties through controlled experiments on simulated data.