Using Evolutionary Computation Approach To Improve The Performance Of The Fuzzy-ART For Document Clustering

碩士 === 長榮管理學院 === 經營管理研究所 === 90 === Automatic document clustering plays an important role in the knowledge management; it is the important issue of document retrieval, too. In the literature, artificial neural networks (ANNs) have been widely applied in the document clustering applications. For o...

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Main Authors: Yih-Juh Liaw, 廖益助
Other Authors: 陳大正
Format: Others
Language:en_US
Published: 2001
Online Access:http://ndltd.ncl.edu.tw/handle/28855229853088283443
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spelling ndltd-TW-090CJU004570012015-10-13T17:34:59Z http://ndltd.ncl.edu.tw/handle/28855229853088283443 Using Evolutionary Computation Approach To Improve The Performance Of The Fuzzy-ART For Document Clustering 使用演化計算改善模糊適應共振理論於文件分群之應用 Yih-Juh Liaw 廖益助 碩士 長榮管理學院 經營管理研究所 90 Automatic document clustering plays an important role in the knowledge management; it is the important issue of document retrieval, too. In the literature, artificial neural networks (ANNs) have been widely applied in the document clustering applications. For overcoming the stability-plasticity dilemma that every ANN clustering system has to face, Fuzzy ART system has been proposed and widely applied. However, for obtaining better clustering, three parameters of Fuzzy ART need to be adjusted manually by means of trial and error. It is time-consuming and does not guarantee an optimum result. Evolutionary computation approaches (ECs) are optimal mathematical search technique based on the principles of natural selection and genetic recombination. Therefore, a hybrid approach (EC based Fuzzy Adaptive Resonance Theory; ECFART) incorporating an EC and a Fuzzy ART neural network has been applied to automate the Fuzzy ART parameters selection process so that the best clustering result can be obtained. A fuzzy concept network of ninety documents has been tested in order to validate the proposed approach. The result shows that the most appropriate parameters of Fuzzy ART could be obtained consistently and effectively by the proposed hybrid approach. 陳大正 2001 學位論文 ; thesis 45 en_US
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description 碩士 === 長榮管理學院 === 經營管理研究所 === 90 === Automatic document clustering plays an important role in the knowledge management; it is the important issue of document retrieval, too. In the literature, artificial neural networks (ANNs) have been widely applied in the document clustering applications. For overcoming the stability-plasticity dilemma that every ANN clustering system has to face, Fuzzy ART system has been proposed and widely applied. However, for obtaining better clustering, three parameters of Fuzzy ART need to be adjusted manually by means of trial and error. It is time-consuming and does not guarantee an optimum result. Evolutionary computation approaches (ECs) are optimal mathematical search technique based on the principles of natural selection and genetic recombination. Therefore, a hybrid approach (EC based Fuzzy Adaptive Resonance Theory; ECFART) incorporating an EC and a Fuzzy ART neural network has been applied to automate the Fuzzy ART parameters selection process so that the best clustering result can be obtained. A fuzzy concept network of ninety documents has been tested in order to validate the proposed approach. The result shows that the most appropriate parameters of Fuzzy ART could be obtained consistently and effectively by the proposed hybrid approach.
author2 陳大正
author_facet 陳大正
Yih-Juh Liaw
廖益助
author Yih-Juh Liaw
廖益助
spellingShingle Yih-Juh Liaw
廖益助
Using Evolutionary Computation Approach To Improve The Performance Of The Fuzzy-ART For Document Clustering
author_sort Yih-Juh Liaw
title Using Evolutionary Computation Approach To Improve The Performance Of The Fuzzy-ART For Document Clustering
title_short Using Evolutionary Computation Approach To Improve The Performance Of The Fuzzy-ART For Document Clustering
title_full Using Evolutionary Computation Approach To Improve The Performance Of The Fuzzy-ART For Document Clustering
title_fullStr Using Evolutionary Computation Approach To Improve The Performance Of The Fuzzy-ART For Document Clustering
title_full_unstemmed Using Evolutionary Computation Approach To Improve The Performance Of The Fuzzy-ART For Document Clustering
title_sort using evolutionary computation approach to improve the performance of the fuzzy-art for document clustering
publishDate 2001
url http://ndltd.ncl.edu.tw/handle/28855229853088283443
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