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Entropy-Driven Geometry in Non-Reflexive Banach Spaces: Metric Constructions, Curvature Bounds, and Machine Learning Applications

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  • Asamba Samwel O

    (Department Mathematics and Actuarial Sciences, Kisii University, Kenya)

  • Mogoi N. Evans

    (Department of Pure and Applied Mathematics, Jaramogi Oginga Odinga University of Science and Technology, Kenya)

Abstract

This paper develops a comprehensive framework for geometric analysis in non-reflexive Banach spaces through the introduction of novel intrinsic metrics and their applications to machine learning. We first construct entropy-driven metrics that induce topologies strictly finer than weak-∗ topologies while preserving completeness, and establish curvature lower bounds in variable-exponent spaces extending optimal transport theory. Our main results demonstrate how these geometric structures enable: (1) linear convergence of gradient flows to sharp minima despite the absence of Radon-Nikody´m property, (2) non-Euclidean adversarial robustness certificates for deep neural networks, and (3) sublinear regret bounds in sparse optimization via Finsler geometric methods. A fundamental non-reflexive Nash embedding theorem is proved, revealing obstructions to reflexive space embeddings through entropy distortion. The theory is applied to derive approximation rates in variable-exponent spaces and accelerated optimization in uniformly convex entropy-augmented norms. These results bridge functional analytic geometry with machine learning, providing new tools for non-smooth optimization and high-dimensional data analysis.

Suggested Citation

  • Asamba Samwel O & Mogoi N. Evans, 2025. "Entropy-Driven Geometry in Non-Reflexive Banach Spaces: Metric Constructions, Curvature Bounds, and Machine Learning Applications," International Journal of Research and Innovation in Applied Science, International Journal of Research and Innovation in Applied Science (IJRIAS), vol. 10(5), pages 872-880, May.
  • Handle: RePEc:bjf:journl:v:10:y:2025:i:5:p:872-880
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