Group Entropies and Mirror Duality: A Class of Flexible Mirror Descent Updates for Machine Learning
Andrzej Cichocki, Piergiulio Tempesta

TL;DR
This paper develops a flexible family of Mirror Descent algorithms using group entropies and mirror duality, enabling adaptation to diverse data geometries and improving convergence in machine learning tasks.
Contribution
It introduces a novel framework linking group theory and entropies with mirror descent, creating adaptable algorithms with tunable hyperparameters for better performance.
Findings
Enhanced convergence properties demonstrated
Robustness shown on large-scale quadratic problems
Flexible adaptation to data distributions achieved
Abstract
We introduce a comprehensive theoretical and algorithmic framework that bridges formal group theory and group entropies with modern machine learning, paving the way for an infinite, flexible family of Mirror Descent (MD) optimization algorithms. Our approach exploits the rich structure of group entropies, which are generalized entropic functionals governed by group composition laws, encompassing and significantly extending all trace-form entropies such as the Shannon, Tsallis, and Kaniadakis families. By leveraging group-theoretical mirror maps (or link functions) in MD, expressed via multi-parametric generalized logarithms and their inverses (group exponentials), we achieve highly flexible and adaptable MD updates that can be tailored to diverse data geometries and statistical distributions. To this end, we introduce the notion of \textit{mirror duality}, which allows us to seamlessly…
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Taxonomy
TopicsStatistical Mechanics and Entropy · Stochastic Gradient Optimization Techniques · Gaussian Processes and Bayesian Inference
