NeuralFDR: Learning Discovery Thresholds from Hypothesis Features

Fei Xia, Martin J. Zhang, James Y. Zou, David Tse

Neural Information Processing Systems 

As datasets grow richer, an important challenge is to leverage the full features in the data to maximize the number of useful discoveries while controlling for false positives. We address this problem in the context of multiple hypotheses testing, where for each hypothesis, we observe a p-value along with a set of features specific to that hypothesis. For example, in genetic association studies, each hypothesis tests the correlation between a variant and the trait.

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