Implicit Hypothesis Testing and Divergence Preservation in Neural Network Representations
- URL: http://arxiv.org/abs/2601.20477v1
- Date: Wed, 28 Jan 2026 10:46:44 GMT
- Title: Implicit Hypothesis Testing and Divergence Preservation in Neural Network Representations
- Authors: Kadircan Aksoy, Peter Jung, Protim Bhattacharjee,
- Abstract summary: We study the supervised training dynamics of neural classifiers through the lens of binary hypothesis testing.<n>We model classification as a set of binary tests between class-conditional distributions of representations and empirically show that, along training trajectories, well-generalizing networks increasingly align with Neyman-Pearson optimal decision rules.
- Score: 3.641372680589358
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: We study the supervised training dynamics of neural classifiers through the lens of binary hypothesis testing. We model classification as a set of binary tests between class-conditional distributions of representations and empirically show that, along training trajectories, well-generalizing networks increasingly align with Neyman-Pearson optimal decision rules via monotonic improvements in KL divergence that relate to error rate exponents. We finally discuss how this yields an explanation and possible training or regularization strategies for different classes of neural networks.
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