A novel pattern recognition algorithm: Combining ART network with SVM to reconstruct a multi-class classifier |
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Authors: | Anna Wang Wenjing Yuan Junfang Liu Zhiguo Yu Hua Li |
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Affiliation: | aCollege of Information Science and Engineering, Northeastern University, 110004, Shenyang, China |
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Abstract: | ![]() Based on the principle of one-against-one support vector machines (SVMs) multi-class classification algorithm, this paper proposes an extended SVMs method which couples adaptive resonance theory (ART) network to reconstruct a multi-class classifier. Different coupling strategies to reconstruct a multi-class classifier from binary SVM classifiers are compared with application to fault diagnosis of transmission line. Majority voting, a mixture matrix and self-organizing map (SOM) network are compared in reconstructing the global classification decision. In order to evaluate the method’s efficiency, one-against-all, decision directed acyclic graph (DDAG) and decision-tree (DT) algorithm based SVM are compared too. The comparison is done with simulations and the best method is validated with experimental data. |
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Keywords: | ART network Fault diagnosis One-against-one Multiclassification SVM |
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