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Retrieval and chaos in extremely dilutedQ-Ising neural networks
Authors:D Bollé  G M Shim  B Vinck  V A Zagrebnov
Institution:(1) Instituut voor Theoretische Fysica and Interdisciplinair Centrum voor Neurale Netwerken, K.U. Leuven, B-3001 Leuven, Belgium;(2) Laboratory of Theoretical Physics, Joint Institute for Nuclear Research, 141980 Dubna, Russia;(3) Present address: CPT, Université d'Aix-Marseille, F-13288 Marseille, Cedex 9, France
Abstract:Using a probabilistic approach, the deterministic and the stochastic parallel dynamics of aQ-Ising neural network are studied at finiteQ and in the limitQrarrinfin. Exact evolution equations are presented for the first time-step. These formulas constitute recursion relations for the parallel dynamics of the extremely diluted asymmetric versions of these networks. An explicit analysis of the retrieval properties is carried out in terms of the gain parameter, the loading capacity, and the temperature. The results for theQrarrinfin network are compared with those for theQ=3 andQ=4 models. Possible chaotic microscopic behavior is studied using the time evolution of the distance between two network configurations. For arbitrary finiteQ the retrieval regime is always chaotic. In the limitQrarrinfin the network exhibits a dynamical transition toward chaos.
Keywords:Graded-response networks  parallel dynamics  extreme dilution  chaotic behavior  probabilistic approach
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