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From Kinetic Theory to AI: a Rediscovery of High-Dimensional Divergences and Their Properties

Published 15 Jul 2025 in math-ph, cs.AI, cs.LG, cs.MA, and math.MP | (2507.11387v1)

Abstract: Selecting an appropriate divergence measure is a critical aspect of machine learning, as it directly impacts model performance. Among the most widely used, we find the Kullback-Leibler (KL) divergence, originally introduced in kinetic theory as a measure of relative entropy between probability distributions. Just as in machine learning, the ability to quantify the proximity of probability distributions plays a central role in kinetic theory. In this paper, we present a comparative review of divergence measures rooted in kinetic theory, highlighting their theoretical foundations and exploring their potential applications in machine learning and artificial intelligence.

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