Tsallis and R\'{e}nyi deformations linked via a new $\lambda$-duality
Ting-Kam Leonard Wong, Jun Zhang

TL;DR
This paper introduces a new $\lambda$-duality framework linking Tsallis and Rényi entropies, leading to a generalized exponential family with deep connections to optimal transport and a new perspective on entropy maximization.
Contribution
It develops a generalized $\lambda$-duality that unifies Tsallis and Rényi entropies within a new exponential family framework, extending classical information geometry concepts.
Findings
The $\lambda$-exponential family generalizes the classical exponential family.
Rényi entropy and divergence naturally emerge from the framework.
A new proof of the entropy maximizing property of the $q$-exponential family.
Abstract
Tsallis and R\'{e}nyi entropies, which are monotone transformations of each other, are deformations of the celebrated Shannon entropy. Maximization of these deformed entropies, under suitable constraints, leads to the -exponential family which has applications in non-extensive statistical physics, information theory and statistics. In previous information-geometric studies, the -exponential family was analyzed using classical convex duality and Bregman divergence. In this paper, we show that a generalized -duality, where is the constant information-geometric curvature, leads to a generalized exponential family which is essentially equivalent to the -exponential family and has deep connections with R\'{e}nyi entropy and optimal transport. Using this generalized convex duality and its associated logarithmic divergence, we show that our…
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Taxonomy
TopicsStatistical Mechanics and Entropy · Mathematical Inequalities and Applications · Advanced Statistical Methods and Models
