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Generalized net model of temporal learning algorithm for artificial neural networks

机译:人工神经网络时间学习算法的广义净模型

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The aim of the present paper is to introduce a new learning algorithm based on the temporal history of the connection weights changes. The basic idea is to investigate the weight alternation frequencies in order to discriminate stable areas from unstable ones. Once determined stable areas can be replaced with topologically simpler neural structures. Unstable areas can be extended with additional neurons or can be functionally modified by changing activation and total input formation functions of the examined neurons.
机译:本文的目的是介绍基于连接权重的时间历史的新学习算法。基本思想是研究权重交替频率,以便区分从不稳定的区域。一旦确定的稳定区域可以用拓扑上更简单的神经结构代替。不稳定区域可以用另外的神经元延伸,或者可以通过改变所检查的神经元的激活和总输入形成功能来用功能改性。

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