Clustering the Self-Organizing Map Based on the Neurons' Associated Pattern Sets

Leonardo Enzo Brito da Silva, J. A. F. Costa
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引用次数: 3

Abstract

This paper presents an automatic clustering system, built as a committee machine, which is used to cohesively partition the self-organizing map. In the proposed method, each expert from the committee machine analyzes the connections of the neuron grid based on a particular similarity matrix, and thus decides which ones should be pruned by gradually removing them and observing the intervals of stability. Those intervals are regarded as the ones in which the number of clusters found through connected components remain constant. The output of each expert is a connectivity matrix that effectively expresses which connections should remain as a binary true or false value. The final stage of the committee machine consists of combining the outputs of the experts, and through majority voting establish which connections should remain in the grid, and hence performing the segmentation of the map. The system was evaluated through its application to synthetic and real world data sets.
基于神经元关联模式集的自组织映射聚类
本文提出了一种自动聚类系统,将其构建为一个委员会机,用于对自组织映射进行内聚划分。在该方法中,来自委员会机的每个专家根据特定的相似矩阵分析神经元网格的连接,然后通过逐渐删除和观察稳定间隔来决定哪些应该被修剪。这些区间被认为是通过连接组件找到的簇的数量保持不变的区间。每个专家的输出是一个连接矩阵,它有效地表示哪些连接应该保留为二进制的真或假值。委员会机器的最后阶段包括组合专家的输出,并通过多数投票确定哪些连接应该留在网格中,从而执行地图的分割。通过对合成数据集和真实世界数据集的应用,对系统进行了评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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