利用耦合高斯映射实现联想记忆

Mio Kobayashi, T. Yoshinaga
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引用次数: 0

摘要

提出了由耦合高斯映射组成的联想记忆模型。高斯映射是一个一维离散动力系统,它产生各种现象,包括周期点和非周期点。高斯联想记忆具有Hopfield和混沌神经联想记忆的相似特征,并且可以通过改变系统参数来改变这些模式。高斯联想记忆在以混沌联想记忆的方式对已存储的模式进行连续回忆的同时,也会回忆一些并没有实际存储到记忆中的伪模式。伪模式与高斯联想记忆中产生的混沌轨迹相对应。因此,采用避免混沌行为的方法,可以消除伪模式的产生。本文介绍了高斯联想记忆模型的动态特性,并给出了仿真结果。此外,还给出了利用高斯联想记忆法获得的输出模式,以及有无避免混沌功能的输出模式。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Associative Memory by Using Coupled Gaussian Maps
The associative memory model comprised of coupled Gaussian maps is proposed. The Gaussian map is a one-dimensional discrete-time dynamical system, which generates various phenomena including periodic and non-periodic points. The Gaussian associative memory has similar characteristics of both Hopfield and chaos neural associative memories, and it can change those modes by just changing the system parameters. When the Gaussian associative memory successively recalls the stored patterns in such manner as the chaotic associative memory, the Gaussian associative memory also recalls some pseudo patterns which were not actually stored into the memory. It was found that the pseudo patterns corresponded to the chaotic trajectories generated in the Gaussian associative memory. Therefore, by using the method of avoiding chaotic behavior, we could eliminate the generation of the pseudo patterns. In this paper, we introduce the dynamics of the Gaussian associative memory model and present the simulation results. In addition, the output patterns obtained by the Gaussian associative memory with/without the function of avoiding chaos are presented.
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