Pac-Bayesian Supervised Classification: The Thermodynamics of Statistical Learning
Olivier Catoni

TL;DR
This paper develops a PAC-Bayesian framework for supervised classification, integrating concepts from statistical mechanics and information theory to derive adaptive, local complexity measures and improved generalization bounds.
Contribution
It introduces a novel approach combining PAC-Bayesian theory with thermodynamic concepts, providing adaptive bounds and effective temperature estimators for classification models.
Findings
Derived local complexity measures using relative entropy
Proposed an adaptive temperature estimator with optimal convergence
Extended Vapnik's bounds to non-i.i.d. data and transductive learning
Abstract
This monograph deals with adaptive supervised classification, using tools borrowed from statistical mechanics and information theory, stemming from the PACBayesian approach pioneered by David McAllester and applied to a conception of statistical learning theory forged by Vladimir Vapnik. Using convex analysis on the set of posterior probability measures, we show how to get local measures of the complexity of the classification model involving the relative entropy of posterior distributions with respect to Gibbs posterior measures. We then discuss relative bounds, comparing the generalization error of two classification rules, showing how the margin assumption of Mammen and Tsybakov can be replaced with some empirical measure of the covariance structure of the classification model.We show how to associate to any posterior distribution an effective temperature relating it to the Gibbs…
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Taxonomy
TopicsMachine Learning and Algorithms · Neural Networks and Applications · Bayesian Methods and Mixture Models
