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Phys. Rev. E 69, 011904 (2004) [13 pages]

Statistical mechanics of stochastic neural networks: Relationship between the self-consistent signal-to-noise analysis, Thouless-Anderson-Palmer equation, and replica symmetric calculation approaches

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Masatoshi Shiino1,* and Michiko Yamana2,†
1Department of Applied Physics, Faculty of Science, Tokyo Institute of Technology, 2-12-1 Ohokayama Meguro-ku Tokyo, Japan
2Laboratory for Mathematical Neuroscience, RIKEN Brain Science Institute, Saitama, Japan

Received 1 July 2003; published 16 January 2004

We study the statistical mechanical aspects of stochastic analog neural network models for associative memory with correlation type learning. We take three approaches to derive the set of the order parameter equations for investigating statistical properties of retrieval states: the self-consistent signal-to-noise analysis (SCSNA), the Thouless-Anderson-Palmer (TAP) equation, and the replica symmetric calculation. On the basis of the cavity method the SCSNA can be generalized to deal with stochastic networks. We establish the close connection between the TAP equation and the SCSNA to elucidate the relationship between the Onsager reaction term of the TAP equation and the output proportional term of the SCSNA that appear in the expressions for the local fields.

© 2004 The American Physical Society

URL:
http://link.aps.org/doi/10.1103/PhysRevE.69.011904
DOI:
10.1103/PhysRevE.69.011904
PACS:
87.18.Sn, 75.10.Nr, 84.35.+i, 05.10.Gg

*Electronic address: mshiino@ap.titech.ac.jp

Present address: Communication and Information Research Laboratory, Central Research Institute of Electric Power Industry, 2-11-1 Iwado kita, Komae-shi, Tokyo 201-8511, Japan.