Presentation 2006-11-24
Prediction of post-translational phosphorylation of proteins using multiple kernel learning(Biometrics1)
Jong Kyoung Kim, Sanguk Kim, Seungjin Choi,
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Abstract(in English) Phosphorylation is one of the most important post-translational modifications which regulate the activity of protein. The problem of predicting phosphorylated sites is the first step of understanding various biological processes that initiate the actual function of proteins in each pathway. In the problem of predicting phosphorylated sites, the bottleneck in prediction accuracy is a way of extracting useful features from the protein sequence. Since there is no optimal feature extraction method minimizing information loss, we should choose one of available methods carefully. Using multiple features rather than one can improve the prediction accuracy. Some kinds of heuristics in bioinformatics have been widely used in order to combine multiple features, including majority voting and single concatenated feature vector. We propose an optimal way of integrating multiple features in the framework of multiple kernel learning. Our numerical experiments confirm that our new feature extraction methods with multiple kernel learning are very useful for predicting phosphorylated sites.
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Keyword(in English) Phosphorylation prediction / Multiple kernel learning / Support vector machine / Semi-infinite linear program
Paper # PRMU2006-143
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Conference Information
Committee PRMU
Conference Date 2006/11/17(1days)
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Registration To Pattern Recognition and Media Understanding (PRMU)
Language ENG
Title (in Japanese) (See Japanese page)
Sub Title (in Japanese) (See Japanese page)
Title (in English) Prediction of post-translational phosphorylation of proteins using multiple kernel learning(Biometrics1)
Sub Title (in English)
Keyword(1) Phosphorylation prediction
Keyword(2) Multiple kernel learning
Keyword(3) Support vector machine
Keyword(4) Semi-infinite linear program
1st Author's Name Jong Kyoung Kim
1st Author's Affiliation Department of Computer Science Pohang University of Science and Technology()
2nd Author's Name Sanguk Kim
2nd Author's Affiliation Division of Molecular and Life Sciences Pohang University of Science and Technology
3rd Author's Name Seungjin Choi
3rd Author's Affiliation Department of Computer Science Pohang University of Science and Technology
Date 2006-11-24
Paper # PRMU2006-143
Volume (vol) vol.106
Number (no) 376
Page pp.pp.-
#Pages 6
Date of Issue