| ID | 19653 |
| Eprint ID | 19653
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| FullText URL | |
| Author |
Kuwata Tomoyuki
Sato-Ilic Mika
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| Abstract | The purpose of this paper is to improve the performance of the kernel fuzzy clustering model by introducing a self-organized algorithm. A conventional kernel fuzzy clustering model is defined as a model which is an improved additive fuzzy clustering. The purpose of this conventional model is to obtain a clearer result by consideration of the interaction of clusters. This paper proposes a fuzzy clustering model based on the idea of self-organized dissimilarity between two objects.
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| Published Date | 2009-11-11
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| Publication Title |
Proceedings : Fifth International Workshop on Computational Intelligence & Applications
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| Volume | volume2009
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| Issue | issue1
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| Publisher | IEEE SMC Hiroshima Chapter
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| Start Page | 127
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| End Page | 131
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| ISSN | 1883-3977
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| NCID | BB00577064
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| Content Type |
Conference Paper
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| language |
English
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| Copyright Holders | IEEE SMC Hiroshima Chapter
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| Event Title | 5th International Workshop on Computational Intelligence & Applications IEEE SMC Hiroshima Chapter : IWCIA 2009
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| Event Location | 東広島市
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| Event Location Alternative | Higashi-Hiroshima City
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| File Version | publisher
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| Refereed |
True
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| Eprints Journal Name | IWCIA
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