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논문검색

Research on Dynamic Cost-Sensitive SVM Classifier based on Chaos Particle Swarm Optimization Algorithm

원문정보

초록

영어

In order to improve the performance of Support Vector Machine (SVM) classifier for imbalanced data, this paper proposes dynamic cost-sensitive SVM classifier based on chaos particle swarm optimization (CPDC_SVM). Firstly, this paper introduces dynamic cost-sensitive thought to SVM classifier, and gives the method for structuring dynamic cost and cost-sensitive SVM model. Secondly, we propose the evaluation methodology performance for classifier, and adopts decimal base to code the particles. At last, chaos thought is introduced in particle swarm optimization algorithm, and the Algorithm of the dynamic cost-sensitive SVM classifier is given, which improves convergent speed and accuracy of particle swarm optimization, and can optimize dynamic cost-sensitive SVM well, so CPDC_SVM adds effectively the convergence speed and accuracy for the particle swarm optimization algorithm. Experimental results show CPDC_SVM has higher precision than traditional SVM classifier, and dynamic cost and chaos particle swarm optimization can improve the performance for classifier.

목차

Abstract
 1. Introduce
 2. Dynamic Cost
 3. Cost-sensitive SVM
 4. Performance of classifier
 5. Dynamic cost-sensitive SVM Classifier Based on Chaos Particle Swarm Optimization Algorithm
  5.1. Chaotic Initialization
  5.2. Chaotic Disturbance
  5.3. Algorithm Description for Dynamic Cost-sensitive SVM Classifier
 6. Simulation Experiment
 7. Conclusion
 Acknowledgments
 References

저자정보

  • Ruili Zhang Department of Computer and Information Engineering, Heze University, Heze 274015, Shandong, China, Key Laboratory of computer Information Processing, Heze University, Heze 274015, Shandong, China

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