Biologically Plausible Associative Memory: Continuous Unit Response + Stochastic Dynamics

作者:Enrique C. Segura Meccia, Roberto P. J. Perazzo

摘要

A neural network model of associative memory is presented which unifies the two historically more relevant enhancements to the basic Little-Hopfield discrete model: the graded response units approach and the stochastic, Glauber-inspired model with a random field representing thermal fluctuations. This is done by casting the retrieval process of the model with graded response neurons, into the framework of a diffusive process governed by the Fokker-Plank equation, which leads to a Langevin system describing the process at a microscopic level, while the time evolution of the probability density function is governed by a multivariate Fokker Planck equation operating over the space of all possible activation patterns. The present unified approach has two notable features: (i) greater biological plausibility and (ii) ability to escape local minima of energy (associated with spurious memories), which makes it a potential tool for those complex optimization problems for which the previous models failed.

论文关键词:associative memory, Fokker-Planck equation, graded response, Hopfield model, stochastic dynamics

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论文官网地址:https://doi.org/10.1023/A:1021742025239