Associative Memory Design via Path Embedding into a Graph

作者:Mehmet Kerem Müezzinoğlu, Cüneyt Güzeli

摘要

A graph theoretical procedure for storing a set of n-dimensional binary vectors as asymptotically stable equilibrium points of a discrete Hopfield neural network is presented. The method gives an auto-associative memory which stores an arbitrary memory set completely. Spurious memories might occur only in a small neighborhood of the original memory vectors, so cause small errors.

论文关键词:associative memory, Hopfield network, information storage and retrieval

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论文官网地址:https://doi.org/10.1023/B:NEPL.0000035601.72544.61