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作 者:WANG Liguo ZHANG Ye ZHANG Junping
机构地区:[1]Department of Information Engineering, Harbin Institute of Technology, Harbin 150006, China [2]College of Information and Communications Engineering, Harbin Engineering University, Harbin 150001, China
出 处:《Chinese Journal of Electronics》2008年第2期285-288,共4页电子学报(英文版)
基 金:This work is supported by the National Natural Science Foundation of China (No.60402025 and No.60302019).
摘 要:Least squares support vector machines (LSSVM) is widely used in pattern recognition and artificial intelligence domain in recent years for its efficiency in classification and regression. The solution of LSSVM is an optimization problem of a Sum squared error (SSE) cost function with only equality constraints and can be solved in a simple linear system. However, its generalization performance is sensitive to noise points and outliers that are often existent in training dataset. In order to endow robustness to LSSVM, a new method for computing weight vector of error is proposed and the substituting of weighted error vector for original error vector in LSSVM gives birth to a new weighted LSSVM. The method gets weight factor by computing distance between sample and its corresponding class center. Sequential minimal optimization (SMO) algorithm is also extended to the new method for its efficient application. Comparison experiments show superiority of the new method in terms of generalization performance, robust property and sparse approximation. Especially, the new method is much faster than the other method for large number of samples.
关 键 词:Weighted least squares support vector machines (WLSSVM) Robust property Sparse approximation Sequential minimal optimization (SMO) algorithm.
分 类 号:TH16[机械工程—机械制造及自动化]
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