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arxiv: 2309.15319 · v1 · pith:6PBQSHYH · submitted 2023-09-26 · cs.LG · q-bio.QM

DeepROCK: Error-controlled interaction detection in deep neural networks

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classification cs.LG q-bio.QM
keywords deeprockinteractionthemchallengecontrollingdeepdiscoverydnns
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The complexity of deep neural networks (DNNs) makes them powerful but also makes them challenging to interpret, hindering their applicability in error-intolerant domains. Existing methods attempt to reason about the internal mechanism of DNNs by identifying feature interactions that influence prediction outcomes. However, such methods typically lack a systematic strategy to prioritize interactions while controlling confidence levels, making them difficult to apply in practice for scientific discovery and hypothesis validation. In this paper, we introduce a method, called DeepROCK, to address this limitation by using knockoffs, which are dummy variables that are designed to mimic the dependence structure of a given set of features while being conditionally independent of the response. Together with a novel DNN architecture involving a pairwise-coupling layer, DeepROCK jointly controls the false discovery rate (FDR) and maximizes statistical power. In addition, we identify a challenge in correctly controlling FDR using off-the-shelf feature interaction importance measures. DeepROCK overcomes this challenge by proposing a calibration procedure applied to existing interaction importance measures to make the FDR under control at a target level. Finally, we validate the effectiveness of DeepROCK through extensive experiments on simulated and real datasets.

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Reviewed papers in the Pith corpus that reference this work. Sorted by Pith novelty score.

  1. Knockoffs-based False Discovery Rate Control and Simplification for Deep Neural Networks

    stat.ML 2026-06 unverdicted novelty 4.0

    Introduces three knockoff filters for FDR-controlled variable screening in regularized DNNs and reports satisfactory empirical performance versus existing algorithms.