An exploration of genetic algorithms for the selection of connection weights in dynamical neural networks

F. A. Dill, B. Deer
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引用次数: 15

Abstract

Genetic algorithms are used to search for network weights which cause the dynamical network to produce long attractors. Several variations of the genetic algorithm are described, and the search performance is compared to that of the base-line method of randomly selected weights. It is pointed out that dynamical networks support self-sustaining patterns of oscillation which can be initiated by a one-time input strobe. These self-sustaining patterns, or attractor cycles, evolve into a repeating pattern for most combinations of network weights and input strobes. Attractor cycles vary in length and are a function of the particular network weights and the particular strobe. An interesting property of these networks is that a particular set of network weights can produce, or recall, a variety of repeating patterns, where the one that is evoked depends on the triggering strobe. This effectively is the storage of sequential patterns in the form of attractors.<>
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动态神经网络中选择连接权值的遗传算法研究
利用遗传算法搜索网络权值,使动态网络产生长吸引子。描述了遗传算法的几种变体,并将其搜索性能与随机选择权值的基线方法进行了比较。指出动态网络支持自维持振荡模式,这种振荡模式可以由一个一次性输入频闪启动。对于大多数网络权值和输入频闪的组合,这些自我维持模式或吸引子循环演变为重复模式。吸引子周期的长度不同,是特定网络权重和特定频闪的函数。这些网络的一个有趣的特性是,一组特定的网络权重可以产生或回忆起各种重复模式,其中被唤起的模式取决于触发频闪。这实际上是以吸引子的形式存储顺序模式。
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