Statistical mechanics of learning with soft margin classifiers

Sebastian Risau-Gusman and Mirta B. Gordon
Phys. Rev. E 64, 031907 – Published 29 August 2001
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Abstract

We study the typical learning properties of the recently introduced soft margin classifiers (SMCs), learning realizable and unrealizable tasks, with the tools of statistical mechanics. We derive analytically the behavior of the learning curves in the regime of very large training sets. We obtain exponential and power laws for the decay of the generalization error towards the asymptotic value, depending on the task and on general characteristics of the distribution of stabilities of the patterns to be learned. The optimal learning curves of the SMCs, which give the minimal generalization error, are obtained by tuning the coefficient controlling the trade-off between the error and the regularization terms in the cost function. If the task is realizable by the SMC, the optimal performance is better than that of a hard margin support vector machine and is very close to that of a Bayesian classifier.

  • Received 17 February 2001

DOI:https://doi.org/10.1103/PhysRevE.64.031907

©2001 American Physical Society

Authors & Affiliations

Sebastian Risau-Gusman1,2 and Mirta B. Gordon1,*

  • 1Département de Recherche Fondamentale sur la Matière Condensée CEA–Grenoble, 17 rue des Martyrs, 38054 Grenoble Cedex 9, France
  • 2Zentrum für Interdisziplinäre Forschung Wellenberg 1, D-33615 Bielefeld, Germany

  • *Also with Centre National de la Recherche Scientifique.

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Vol. 64, Iss. 3 — September 2001

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