[1]LIU Sheng,LI Gao-yun,JIANG Na.Multiobjective optimization of an immune fish swarm algorithm to improve support vector machine performance[J].CAAI Transactions on Intelligent Systems,2010,5(2):144-149.
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CAAI Transactions on Intelligent Systems[ISSN 1673-4785/CN 23-1538/TP] Volume:
5
Number of periods:
2010 2
Page number:
144-149
Column:
学术论文—人工智能基础
Public date:
2010-04-25
- Title:
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Multiobjective optimization of an immune fish swarm algorithm to improve support vector machine performance
- Author(s):
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LIU Sheng1; LI Gao-yun1; 2; JIANG Na1
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1.College of Automation,Harbin Engineering University, Harbin 150001,China;
2.Jiujiang Branch of 707 Research Institute,China Shipbuilding Industry Corporation, Jiujiang 332007,China
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- Keywords:
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support vector machines; multiobjective optimization; Pareto approximate solution set; immune fish swarm algorithm
- CLC:
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TP183
- DOI:
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- Abstract:
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Accuracy and speed when training a support vector machine (SVM) algorithm provides critical measurements of the algorithm’s performance. To optimize performance, a mathematical model of multiobjective optimization with improvements in these two parameters as goals was established. A Pareto approximate solution set was obtained by optimizing multiple targets simultaneously. In the process of finding the Pareto approximate solution set, a concentration mechanism from an immune algorithm was introduced into the basic artificial fish swarm algorithm. This produced significant improvements and resulted in the proposed immune fish swarm algorithm. Taking the nonlinear dynamic system simulation data as sample data, a Pareto approximate solution set of multiobjective optimization of SVM performance was obtained using the improved algorithm. Simulation results showed that, for solving multiobjective optimization, the immune fish swarm algorithm was superior to both a basic artificial fish swarm algorithm and to genetic algorithms.