MLLGMEApr 29

Deep-testing: the case of dependence detection

arXiv:2604.2655811.4
Predicted impact top 83% in ML · last 90 daysOriginality Highly original
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Provides a novel framework for classical hypothesis testing using deep learning, demonstrating strong performance for the fundamental problem of independence testing.

Deep-testing uses deep neural networks as test statistics for hypothesis testing, achieving the highest overall power among twenty methods for independence testing across complex dependence structures in simulations.

Deep learning methods have proved highly effective for classification and image recognition problems. In this paper, we ask whether this success can be transferred to hypothesis testing: if a neural network can distinguish, for example, an image of a handwritten digit from another, can it also distinguish an "image of a sample" (such as a scatter plot) generated under a given statistical model from one generated outside that model? Motivated by this idea, we propose a novel procedure called deep-testing, which approaches the classical inferential problem of hypothesis testing through deep learning. More specifically, the test statistic is a classification map learned by a deep neural network from simulated data satisfying the null and alternative hypotheses, leveraging its strong discriminating power to construct a highly powerful test. As a proof of concept, we apply deep-testing to the problem of independence testing, arguably one of the most important problems in statistics. In a large-scale simulation study, deep-testing achieves the highest overall power against nineteen competing methods across a broad range of complex dependence structures, confirming the viability of the proposed approach.

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