Journal of Applied Sciences
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JIN Tian, ZHOU Zhi-min, SONG Qian and CHANG Wen-ge
School of Electronic Science and Engineering, National University of Defense Technology, Changsha, 410073, China
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Abstract: Fuzzy hypersphere support vector machine (FHS-SVM) has stronger generalization capability than hyperplane support vector machine in the one-class classification problem, being successful in radar target detection. Some hyperparameters have to be predefined before the FHS-SVM training, with different hyperparameters leading to significant difference in the FHS-SVM performance. In this paper, equivalence between FHS-SVM training and the level 1 Bayesian inference of the evidence framework is proved. Then, an FHS-SVM hyperparameter optimization iteration method is proposed based on the evidence framework. Using landmine detection data obtained with ultra-wide band synthetic aperture radar, the proposed iteration method is verified by comparing it with an exhaustive search method.
Key words: evidence framework, fuzzy hypersphere support vector machine(FHS-SVM), hyperparameter optimization, landmine detection
JIN Tian;ZHOU Zhi-min;SONG Qian and CHANG Wen-ge. Hyperparameter Optimization of Fuzzy Hypersphere Support Vector Machine Based on Evidence Framework[J]. Journal of Applied Sciences.
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https://www.jas.shu.edu.cn/EN/Y2007/V25/I3/227