Research in SVM Sample Optimizes of ISODATA Algorithm

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Abstract:

Support Vector Machine is widely used in data classification, but in the case of more training samples, the training time is longer. To solve this problem, use the ISODATA clustering algorithm to cluster samples to obtain the new cluster center, together with high similarity to the error for the sample to form a new cluster of training samples, training support vector machines. So that a solution of high similarity to repeat the training samples of similar problems, while focusing on the easily lead to wrong classification of the training samples. The support vector machine classification accuracy can be improved, and also reduces the training time, to make it more convenient for engineering application.

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Periodical:

Advanced Materials Research (Volumes 532-533)

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1507-1511

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Online since:

June 2012

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© 2012 Trans Tech Publications Ltd. All Rights Reserved

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[1] T. Joachims. Making large-scale SVM leaming Practical. In scholkoPf. B,C. Buiges and A. Smola. Advances in Kernel Methods: Support Vector Learning, (1999), 169一184.

DOI: 10.7551/mitpress/1130.003.0015

Google Scholar

[2] Cristianini N, Shawe-Taylor J. An Introduction To Support Vector Machines And Other Kernel-Based Learning Methods. Cambridge University Press (2000).

DOI: 10.1017/cbo9780511801389

Google Scholar

[3] Yixin Chen and James Z Wang. Support vector learning for fuzzy rule-based classification systems. IEEE Transactions on Fuzzy Systems, vol. 11(2003).

DOI: 10.1109/tfuzz.2003.819843

Google Scholar

[4] Bezdek J C. Physical interpretation of fuzzy ISODATA. IEEE Trans, Systems Man, Cybern, (1976), SME-6.

Google Scholar

[5] Bezdek. Pattern Recognition with Fuzzy Objective Funtion Algorithms. New York: Plenum Press, (1981).

Google Scholar

[6] WU Qiong, LIU Wen ying, YANG Yi han. Time Series OnlinePrediction Algorithm Based on Least Squares Support VectorMachine. Central South University of Technology, (2007), 14( 7) : 442.

DOI: 10.1007/s11771-007-0086-0

Google Scholar

[7] Suykens J A K, Branbanter J K, Lukas L, et al. Weighted Least Squares Support Vector Machine: Robustness and Sparse Approximat ion . Neuro C om put ing, ( 2002), 48( 1) : 85.

DOI: 10.1016/s0925-2312(01)00644-0

Google Scholar