Kernel Trees for Support Vector Machines(<Special Section>Knowledge, Information and Creativity Support System)
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概要
- 論文の詳細を見る
The support vector machines (SVMs) are one of the most effective classification techniques in several knowledge discovery and data mining applications. However, a SVM requires the user to set the form of its kernel function and parameters in the function, both of which directly affect to the performance of the classifier. This paper proposes a novel method, named a kernel-tree, the function of which is composed of multiple kernels in the form of a tree structure. The optimal kernel tree structure and its parameters is determined by genetic programming (GP). To perform a fine setting of kernel parameters, the gradient descent method is used. To evaluate the proposed method, benchmark datasets from UCI and dataset of text classification are applied. The result indicates that the method can find a better optimal solution than the grid search and the gradient search.
- 社団法人電子情報通信学会の論文
- 2007-10-01
著者
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Theeramunkong Thanaruk
Information And Computer Technology School Sirindhorn International Institute Of Technology Thammasa
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Theeramunkong Thanaruk
Information And Computer Technology School Sirindhorn International Institute Of Technology Thammasa
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METHASATE Ithipan
Information and Computer Technology School, Sirindhorn International Institute of Technology, Thamma
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Methasate Ithipan
Thammasat Univ. Tha
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Methasate Ithipan
Information And Computer Technology School Sirindhorn International Institute Of Technology Thammasa
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