进化策略在联想记忆Hopfield模型中的应用

A. Imada, K. Araki
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引用次数: 16

摘要

我们将进化计算应用于Hopfield的联想记忆神经网络模型。在Hopfield模型中,几乎无限数量的突触权重组合赋予网络联想记忆功能。此外,在蓄水能力和吸引力盆地的大小之间存在权衡。因此,该模型可以被认为是一个多模态和/或多目标函数优化的测试套件。作为初步阶段,我们研究了联想记忆在简单进化过程中的基本行为。在本文中,我们提出了一些使用进化策略的实验。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of an evolution strategy to the Hopfield model of associative memory
We apply evolutionary computations to Hopfield's neural network model of associative memory. In the Hopfield model, an almost infinite number of combinations of synaptic weights gives a network an associative memory function. Furthermore, there is a trade-off between the storage capacity and the size of the basin of attraction. Therefore, the model can be thought of as a test suite of multi-modal and/or multi-objective function optimizations. As a preliminary stage, we investigate the basic behavior of an associative memory under simple evolutionary processes. In this paper, we present some experiments using an evolution strategy.
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