会议专题

An Improved QDPSO Training Hypersphere One Class Support Vector Machine

Combined with the optimization strategy of hypersphere OC-SVM and QDPSO, an improved QDPSO method is presented to training hypersphere OC-SVM. In this method, the new position of the directional particle is calculated based on the current global best point(gBest), which optimized direction conforms to Zoutendijk fastest decline method principle. In the initialization, the position of one particle is initialized according to SMO, which make its position nearer to the global optimum solution; and the boundary points of subjected plane are concerned as the initialized position of qther particles their, so as to make the searching area wider. The experiment shows, the convergence and the generalization of DQDPSO is good, the misrecognition of D-QDPSO is 0.12% lower than that of SMO, the operating speed is 2 times faster than that of LPSO.

hypersphere one doss support vector machine QDPSO Zoutendijk fastest decline principle Directional particle Generalization

Yao Fu-guang Zhong Xian-xin

Department of Computer Science Chongqing Education College Chongqing,China Key Lab of Opto-electronic and System of the Ministry of Education Chongqing University Chongqing, C

国际会议

2011 6th Joint International Information Technology and Artificial Intelligence Conference(2011年第六届IEEE联合国际信息技术与人工智能会议 IEEE ITAIC 2011)

重庆

英文

396-400

2011-08-20(万方平台首次上网日期,不代表论文的发表时间)