The statistical mechanics of learning a rule

Timothy L. H. Watkin, Albrecht Rau, and Michael Biehl
Rev. Mod. Phys. 65, 499 – Published 1 April 1993
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Abstract

A summary is presented of the statistical mechanical theory of learning a rule with a neural network, a rapidly advancing area which is closely related to other inverse problems frequently encountered by physicists. By emphasizing the relationship between neural networks and strongly interacting physical systems, such as spin glasses, the authors show how learning theory has provided a workshop in which to develop new, exact analytical techniques.

    DOI:https://doi.org/10.1103/RevModPhys.65.499

    ©1993 American Physical Society

    Authors & Affiliations

    Timothy L. H. Watkin* and Albrecht Rau

    • Department of Physics, University of Oxford, Oxford OX1 3NP, United Kingdom

    Michael Biehl

    • Physikalisches Institut, Julius-Maximilians-Universität, Am Hubland, D-8700 Würzburg, Germany

    • *Present address: St. Johns College, Cambridge CB2 ITP, United Kingdom.
    • Present address: Patentanwälte Schwabe, Sandmair, Marx, Stuntzstr. 16, D-8000 München 80, Germany.

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    Issue

    Vol. 65, Iss. 2 — April - June 1993

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