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Soft Margin Training for Associative Memories Implemented by Recurrent Neural Networks

机译:递归神经网络对联想记忆的软边际训练

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In this paper, the authors discuss a new synthesis approach to train associative memories, based on recurrent neural networks (RNNs). They propose to use soft margin training for associative memories, which is efficient when training patterns are not all linearly separable. On the basis of the soft margin algorithm used to train support vector machines (SVMs), the new algorithm is developed in order to improve the obtained results via optimal training algorithm also innovated by the authors, which are not fully satisfactory due to that some times the training patterns are not all linearly separable. This new algorithm is used for the synthesis of an associative memory considering the design based on a RNN with the connection matrix having upper bounds on the diagonal elements to reduce the total number of spurious memory. The scheme is evaluated via a full scale simulator to diagnose the main faults occurred in fossil electric power plants.
机译:在本文中,作者讨论了一种基于递归神经网络(RNN)的新的训练联想记忆的综合方法。他们建议对关联记忆使用软边际训练,这在训练模式不能全部线性分离时非常有效。在用于训练支持向量机(SVM)的软边际算法的基础上,开发了新算法,以通过作者也创新的最佳训练算法来改善获得的结果,由于某些时候,该算法并不完全令人满意训练模式并非全部都是线性可分离的。考虑到基于RNN的设计,该新算法用于关联存储器的合成,其中连接矩阵在对角元素上具有上限,以减少虚假存储器的总数。该方案通过全面的模拟器进行评估,以诊断化石电厂中发生的主要故障。

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