淡江大學機構典藏:Item 987654321/96022
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    题名: Integration of FCM and Agglomeration with Kohonen Clustering Networks
    作者: Hsieh, Ching-Tang;Lai, Eugene;Ye, Jin-Ruong;Hung, Kuo-Ming
    贡献者: 淡江大學電機工程學系
    关键词: 叢聚分析;柯霍氏網路;模糊集合;凝聚;非督導性學習;Clustering Analysis;Kohonen Network;Fuzzy Set;Agglomeration;Unsupervised Learning
    日期: 1999-08
    上传时间: 2014-02-13 11:35:51 (UTC+8)
    摘要: The study of classical pattern recognition most closely related to the Kohonen self-organizing algorithms is known as cluster analysis. This class of algorithms is a set of heuristic procedures that suffers from several problems. We present a fuzzy agglomeration Kohonen clustering network which integrates the competitive agglomeration model into the learning rate and updating strategies of the Kohonen network. The objective function of competitive agglomeration composes of two terms: one is similar to the Fuzzy C-means (FCM) objective function; the other is the sum of squares of the cardinalities of clusters which allows us to control the number of clusters. This yields an optimization problem related to competitive agglomeration. Anderson's IRIS data are used to illustrate this method; and results are compared with the standard Kohonen approach and the fuzzy Kohonen clustering network.
    關聯: 第八屆國際模糊系統學會世界年會暨研討會論文集﹝第二冊﹞=Proceedings of the Eighth International Fuzzy Systems Association World Congress ( Vol.II ),頁757-761
    显示于类别:[電機工程學系暨研究所] 會議論文

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