商正则特征映射竞争学习神经网络

Jinwuk Scok, Seongwon Cho
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引用次数: 0

摘要

提出了一种新的竞争学习神经网络学习方法——商正则特征映射。以往的神经网络学习算法没有考虑其拓扑性质,因而对其动力学没有明确的定义。我们证明了通过竞争学习获得的权重向量分解输入向量空间并将其映射到商空间X/R。此外,我们定义了映射[1,/spl prop/]/spl plusmn/R/sup n/)到(0,1)的商函数/spl epsi/,并从带有商函数的性能度量推导出了所提出的算法。遥感数据模式识别的实验结果表明,与传统的竞争学习方法相比,该算法具有优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Quotient canonical feature map competitive learning neural network
We present a new learning method called the quotient canonical feature map for competitive learning neural networks. The previous neural network learning algorithms did not consider their topological properties and thus, the dynamics was not clearly defined. We show that the weight vectors obtained by competitive learning decompose the input vector space and map it to the quotient space X/R. In addition, we define /spl epsi/, the quotient function which maps [1,/spl prop/]/spl plusmn/R/sup n/) to (0,1), and induce the proposed algorithm from the performance measure with the quotient function. Experimental results for pattern recognition of remote sensing data indicate the superiority of the proposed algorithm in comparision to conventional competitive learning methods.
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