システム制御情報学会論文誌
Online ISSN : 2185-811X
Print ISSN : 1342-5668
ISSN-L : 1342-5668
パターン認識用ファジィサポートベクトルマシンのアーキテクチャ
井上 拓也阿部 重夫
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ジャーナル フリー

2002 年 15 巻 2 号 p. 92-98

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In conventional support vector machines (SVMs), an n-class problem is converted into n two-class problems. For the i-th two-class problem we determine the optimal decision function which separates class i from the remaining classes. In classification, a sample is classified into class i only when the value of the i-th decision function is positive. In this architecture, the sample is unclassifiable if the values of more than two decision functions are positive or all the values are negative. In this paper, to overcome this problem, we propose fuzzy support vector machines (FSVMs). Using the decision functions obtained by training the SVM, for each class, we define a truncated polyhedral pyramidal membership function. Since, for the data in the classifiable regions. the classification results are the same for the two methods, the generalization ability of the FSVM is the same with or better than that of the SVM. We evaluate our method for three benchmark data sets and demonstrate the superiority of the FSVM over the SVM.
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