Fuzzy c-Means Algorithms for Data with Tolerance Using Kernel Functions
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概要
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In this paper, two new clustering algorithms based on fuzzy c-means for data with tolerance using kernel functions are proposed. Kernel functions which map the data from the original space into higher dimensional feature space are introduced into the proposed algorithms. Non-linear boundary of clusters can be easily found by using the kernel functions. First, two clustering algorithms for data with tolerance are introduced. One is based on standard method and the other is on entropy-based one. Second, the tolerance in feature space is discussed taking account into soft margin algorithm in Support Vector Machine. Third, two objective functions in feature space are shown corresponding to two methods, respectively. Fourth, Karush-Kuhn-Tucker conditions of two objective functions are considered, respectively, and these conditions are re-expressed with kernel functions as the representation of an inner product for mapping from the original pattern space into a higher dimensional feature space. Fifth, two iterative algorithms are proposed for the objective functions, respectively. Through some numerical experiments, the proposed algorithms are discussed.
- 2008-09-01
著者
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Endo Yasunori
University Of Tsukuba
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Kanzawa Yuchi
Shibaura Institute Of Technology
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MIYAMOTO Sadaaki
University of Tsukuba
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KANZAWA Yuchi
Faculty of Engineering, Shibaura Institute of Technology
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ENDO Yasunori
Faculty of Systems and Information Engineering, University of Tsukuba
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MIYAMOTO Sadaaki
Faculty of Systems and Information Engineering, University of Tsukuba
関連論文
- Fuzzy c-Means Algorithms for Data with Tolerance Using Kernel Functions
- Fuzzy classification function of fuzzy c-means algorithms for data with tolerance (特集 クラスタリング)
- Fuzzy c-Means Algorithms for Data with Tolerance Based on Opposite Criterions(Soft Computing,Nonlinear Theory and its Applications)