Rigorous results on the thermodynamics of the dilute Hopfield model |
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Authors: | Anton Bovier Véronique Gayrard |
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Affiliation: | (1) Institut für Angewandte Analysis und Stochastik, Hausvogteiplatz 5-7, O-1086 Berlin, Germany;(2) Centre de Physique Théorique-CNRS, Luminy, Case 907, F-13288 Marseille Cedex, France |
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Abstract: | We study the Hopfield model of an autoassociative memory on a random graph onN vertices where the probability of two vertices being joined by a link isp(N). Assuming thatp(N) goes to zero more slowly thanO(1/N), we prove the following results: (1) If the number of stored patternsm(N) is small enough such thatm(N)/Np(N) 0, asN, then the free energy of this model converges, upon proper rescaling, to that of the standard Curie-Weiss model, for almost all choices of the random graph and the random patterns. (2) If in additionm(N) < ln N/ln 2, we prove that there exists, forT< 1, a Gibbs measure associated to each original pattern, whereas for higher temperatures the Gibbs measure is unique. The basic technical result in the proofs is a uniform bound on the difference between the Hamiltonian on a random graph and its mean value. |
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Keywords: | Neural networks Hopfield model random graphs mean-field theory |
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