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基于证据框架的模糊超球面支持向量机超参数优化
引用本文:金添,周智敏,宋千,常文革.基于证据框架的模糊超球面支持向量机超参数优化[J].应用科学学报,2007,25(3):227-232.
作者姓名:金添  周智敏  宋千  常文革
作者单位:国防科学技术大学,电子科学与工程学院,湖南,长沙,410073
摘    要:模糊超球面支持向量机(FHS-SVM)在处理一类分类问题时比超平面支持向量机泛化能力更强,特别是在雷达目标检测中得到了成功应用.FHS-SVM训练时需要预设一些超参数,不同的超参数得到的FHS-SVM性能差异很大.文中首先证明了FHS-SVM训练过程与证据框架第一层贝叶斯推理的等价性,然后在证据框架下提出了FHS-SVM超参数优化迭代方法.基于超宽带合成孔径雷达探雷数据,通过与穷举方法结果的对比检验了迭代优化方法的有效性.

关 键 词:证据框架  模糊超球面支持向量机  超参数优化  地雷检测
文章编号:0255-8297(2007)03-0227-06
修稿时间:2006-04-292006-11-20

Hyperparameter Optimization of Fuzzy Hypersphere Support Vector Machine Based on Evidence Framework
JIN Tian,ZHOU Zhi-min,SONG Qian,CHANG Wen-ge.Hyperparameter Optimization of Fuzzy Hypersphere Support Vector Machine Based on Evidence Framework[J].Journal of Applied Sciences,2007,25(3):227-232.
Authors:JIN Tian  ZHOU Zhi-min  SONG Qian  CHANG Wen-ge
Institution:School of Electronic Science and Engineering, National University of Defense Technology, Changsha 410073, China
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.
Keywords:evidence framework  fuzzy hypersphere support vector machine(FHS-SVM)  hyperparameter optimization  landmine detection
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