Proposes HCLM framework formalizing entropy regularization via effective information force and geometric surrogates like log-determinant covariance, with experiments claiming stronger stable forces than softmax entropy.
Conference on Learning Theory , year =
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Human-Centered Learning Mechanics: A Dynamical Framework for Entropy-Regulated Representation Learning
Proposes HCLM framework formalizing entropy regularization via effective information force and geometric surrogates like log-determinant covariance, with experiments claiming stronger stable forces than softmax entropy.