使用自优化神经网络的无监督聚类

A. Horzyk
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引用次数: 6

摘要

自优化神经网络(SONNs)在解决各种分类任务方面非常有效。他们已经成功地适应了许多不同的问题。经典的SONN自适应过程被定义为有监督的。本文引入了一种新的非常有趣的SONN特征——无监督聚类能力。无监督SONNs (US-SONNs)能够找出一些训练数据的最大区别特征,并递归地将它们划分为子组。US-SONNs还可以描述区分这些群体的特征的重要性。递归地对数据进行划分,直到子组中的数据差异难以察觉。与其他无监督聚类方法相比,SONN聚类进行得非常快。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unsupervised clustering using self-optimizing neural networks
Self-optimizing neural networks (SONNs) are very effective in solving different classification tasks. They have been successfully used to many different problems. The classical SONN adaptation process has been defined as supervised. This paper introduces a new very interesting SONN feature - the unsupervised clustering ability. The unsupervised SONNs (US-SONNs) are able to find out most differentiating features for some training data and recursively divide them into subgroups. US-SONNs can also characterize the importance of features differentiating these groups. The division of the data is recursively performed till the data in subgroups differ imperceptibly. The SONN clustering proceeds very fast in comparison to other unsupervised clustering methods.
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