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"lin chih jen"

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Showing items 86-110 of 208  (9 Page(s) Totally)
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Institution Date Title Author
國立臺灣大學 2008 Coordinate Descent Method for Large-scale L2-loss Linear Support Vector Machines- Chang, Kai-Wei; Hsieh, Cho-Jui; Lin, Chih-Jen
國立臺灣大學 2008 LIBLINEAR: A library for large linear classification Fan, Rong-En; Chang, Kai-Wei; Hsieh, Cho-Jui; Wang, Xiang-Rui; Lin, Chih-Jen
國立臺灣大學 2008 Ranking individuals by group comparisons Huang, Tzu-Kuo; Lin, Chih-Jen; Weng, Ruby C.
國立臺灣大學 2008 Cross-generation and cross-laboratory predictions of Affymetrix microarrays by rank-based methods Liu, Hsi-Che; Chen, Chien-Yu; Liu, Yu-Ting; Chu, Cheng-Bang; Liang, Der-Cherng; Shih, Lee-Yung; Lin, Chih-Jen
國立臺灣大學 2008 Derivation of embryonic stem cell by nuclear transfer using cryopreserved eggs Chang, Ching-Chien; Sung, Li-Ying; Amano, Tomokazu; Amano, Misa; Lin, Chih-Jen; Nagy, Zsolt Peter; Xu, Jie; Tian, Xiuchun Cindy; Yang, Xiangzhong
國立政治大學 2007-10 A note on Platt''s probabilistic outputs for support vector machines Lin,Hsuan-Tien;Lin,Chih-Jen;Weng,Ruby C.
臺大學術典藏 2007-04-19T03:15:33Z Decomposition methods for linear support vector machines Sun, Tony; Lin, Chih-Jen; Kao, Wei-Chun; Chung, Kai-Min; Chung, Kai-Min; Kao, Wei-Chun; Sun, Tony; Lin, Chih-Jen
臺大學術典藏 2007-04-19T03:10:44Z A note on the decomposition methods for support vector regression Liao, Shuo-Peng; Lin, Hsuan-Tien; Lin, Chih-Jen; Liao, Shuo-Peng; Lin, Hsuan-Tien; Lin, Chih-Jen
國立臺灣大學 2007 Projected gradient methods for nonnegative matrix factorization Lin, Chih-Jen
國立臺灣大學 2007 On the convergence of multiplicative update algorithms for nonnegative matrix factorization Lin, Chih-Jen
國立臺灣大學 2007 A note on Platt’s probabilistic outputs for support vector machines Lin, Hsuan-Tien; Lin, Chih-Jen; Weng, Ruby C.
國立臺灣大學 2007 Projected Gradient Methods for Non-negative Matrix Factorization Lin, Chih-Jen
國立臺灣大學 2007 A note on Platt's probabilistic outputs for support vector machines Lin, Hsuan-Tien; Lin, Chih-Jen; Weng, Ruby C.
國立政治大學 2007 Trust region Newton method for large-scale logistic regression. Lin, Chih-Jen;Weng, Ruby C.;Keerthi, S. Sathiya; 翁久幸; Weng, Ruby C.
臺大學術典藏 2007 A note on Platt's probabilistic outputs for support vector machines Lin, Hsuan-Tien; Lin, Chih-Jen; Weng, Ruby C.; Lin, Hsuan-Tien; Lin, Chih-Jen; Weng, Ruby C.
臺大學術典藏 2006-09-27T10:57:01Z Leave-one-out Bounds for Support Vector Regression Model Selection Lin, Chih-Jen; Chang, Ming-Wei; Chang, Ming-Wei; Lin, Chih-Jen
國立政治大學 2006-01 A Generalized Bradley-Terry Model: From Group Competition to Individual Skill Huang, Tzu-Kuo;翁久幸;林智仁; Huang, Tzu-Kuo;Ruby C. Weng;Lin ,Chih-Jen
國立政治大學 2006 Generalized Bradley-Terry Models and Multi-Class Probability Estimates Weng, Ruby C.;Huang, Tzu-kuo;Lin, Chih-jen; 翁久幸
國立臺灣大學 2006 LIBSVM: a Library for Support Vector Machines Chang, Chih-Chung; Lin, Chih-Jen
國立臺灣大學 2006 On the Convergence of Multiplicative Update Algorithms for Non-negative Matrix Factorization Lin, Chih-Jen
國立臺灣大學 2006 Projected Gradient Methods for Non-negative Matrix Factorization Lin, Chih-Jen
國立臺灣大學 2006 A study on SMO-type decomposition methods for support vector machines Chen, Pai-Hsuen; Fan, Rong-En; Lin, Chih-Jen
國立臺灣大學 2006 Generalized Bradley-Terry models and multi-class probability estimates Huang, Tzu-Kuo; Weng, Ruby C.; Lin, Chih-Jen
臺大學術典藏 2006 LIBSVM: a Library for Support Vector Machines Chang, Chih-Chung; Lin, Chih-Jen; Chang, Chih-Chung; Lin, Chih-Jen
臺大學術典藏 2006 On the Convergence of Multiplicative Update Algorithms for Non-negative Matrix Factorization Lin, Chih-Jen; Lin, Chih-Jen

Showing items 86-110 of 208  (9 Page(s) Totally)
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