Normalizing Flows for Knockoff-free Controlled Feature Selection
–Neural Information Processing Systems
Controlled feature selection aims to discover the features a response depends on while limiting the false discovery rate (FDR) to a predefined level. Recently, multiple deep-learning-based methods have been proposed to perform controlled feature selection through the Model-X knockoff framework. We demonstrate, however, that these methods often fail to control the FDR for two reasons. First, these methods often learn inaccurate models of features. Second, the swap property, which is required for knockoffs to be valid, is often not well enforced.
Neural Information Processing Systems
Dec-24-2025, 09:03:35 GMT
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