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Fast Training of Support Vector Machines Using Error-Center-Based Optimization 被引量:3
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作者 l. meng, q. h. wu department of electrical engineering and electronics, the university of liverpool, liverpool, l69 3gj, uk 《International Journal of Automation and computing》 EI 2005年第1期6-12,共7页
This paper presents a new algorithm for Support Vector Machine (SVM) training, which trains a machine based on the cluster centers of errors caused by the current machine. Experiments with various training sets show t... This paper presents a new algorithm for Support Vector Machine (SVM) training, which trains a machine based on the cluster centers of errors caused by the current machine. Experiments with various training sets show that the computation time of this new algorithm scales almost linear with training set size and thus may be applied to much larger training sets, in comparison to standard quadratic programming (QP) techniques. 展开更多
关键词 Support vector machines quadratic programming pattern classification machine learning
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