Implicit Hypothesis Testing and Divergence Preservation in Neural Network Representations
Machine Learning
2026-05-18 v4 Information Theory
math.IT
Abstract
We study the training dynamics of neural classifiers through the lens of binary hypothesis testing. We re-formalize classification as a collection of binary tests between class-conditional distributions induced by learned representations and show empirically that, along training trajectories, well-generalizing networks progressively approach Neyman-Pearson optimal decision rules, as measured by monotonic growth in the KL divergence retained by learned representations. We provide sufficient conditions for exact optimality, discuss its implications for training regularization, and define an informational plane, (so-called Evidence-Error plane) where convergence can be assessed methodically across network architecture.
Cite
@article{arxiv.2601.20477,
title = {Implicit Hypothesis Testing and Divergence Preservation in Neural Network Representations},
author = {Kadircan Aksoy and Protim Bhattacharjee and Peter Jung},
journal= {arXiv preprint arXiv:2601.20477},
year = {2026}
}