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   An Improved SVM Based on Similarity Metric  
   
نویسنده Wang Chaoyong ,Sun Yanfeng ,Liang Yanchun
منبع journal of universal computer science - 2007 - دوره : 13 - شماره : 10 - صفحه:1462 -1470
چکیده    Abstract: a novel support vector machine method for classification is presented in this paper. a modified kernel function based on the similarity metric and rieman- nian metric is applied to the support vector machine. in general, it is believed that the similarity of homogeneous samples is higher than that of inhomogeneous samples. therefore, in riemannian geometry, riemannian metric can be used to reflect local property of a curve. in order to enlarge the similarity metric of the homogeneous sam- ples or reduce that of the inhomogeneous samples in the feature space, riemannian metric is used in the kernel function of the svm. simulated experiments are performed using the databases including an artificial and the uci real data. simulation results show the effectiveness of the proposed algorithm through the comparison with four typical kernel functions without similarity metric.
کلیدواژه Support vector machine ,Riemannian metric ,Similarity metric
آدرس Jilin University, College of Computer Science and Technology, China. Ministry of Education, Key Laboratory of Symbol Computation and Knowledge Engineering, China. Jilin Teacher’s Institute of Engineering and Technology, Department of Fundamental Sciences, China, Jilin University, College of Computer Science and Technology, China. Ministry of Education, Key Laboratory of Symbol Computation and Knowledge Engineering, China, Jilin University, College of Computer Science and Technology, China. Ministry of Education, Key Laboratory of Symbol Computation and Knowledge Engineering, China
پست الکترونیکی ycliang@jlu.edu.cn
 
     
   
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