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基于ADASYN与AdaBoostSVM相结合的不平衡分类算法
引用本文:柳培忠,洪铭,黄德天,骆炎民,王守觉.基于ADASYN与AdaBoostSVM相结合的不平衡分类算法[J].北京工业大学学报,2017,43(3).
作者姓名:柳培忠  洪铭  黄德天  骆炎民  王守觉
作者单位:华侨大学工学院,福建 泉州,362000;中国科学院半导体研究所,江苏 苏州,215123
基金项目:国家重大科学仪器设备开发专项资助项目
摘    要:对于平衡数据集支持向量机(support vector machine,SVM)通常具有很好的分类性能和泛化能力,然而对于不平衡数据集,SVM只能得到次优结果,针对该问题提出了一种基于SVM的AS-Ada Boost SVM分类算法.首先,通过使用ADASYN采样,提高少类样本在边界区域的密度;然后,使用基于径向基核支持向量机(radial basis function kernel mapping support vector machine,RBFSVM)模型弱分类器的Ada Boost SVM算法训练得到决策分类器.通过将该算法在各种不平衡数据集上的测试结果与单纯运用ADASYN技术、Ada Boost SVM、SMOTEBoost等其他分类器进行比较,验证了该算法的有效性和鲁棒性.

关 键 词:机器学习  不平衡数据  数据分类  ADASYN  AdaBoostSVM

Joint ADASYN and AdaBoostSVM for Imbalanced Learining
LIU Peizhong,HONG Ming,HUANG Detian,LUO Yanmin,WANG Shoujue.Joint ADASYN and AdaBoostSVM for Imbalanced Learining[J].Journal of Beijing Polytechnic University,2017,43(3).
Authors:LIU Peizhong  HONG Ming  HUANG Detian  LUO Yanmin  WANG Shoujue
Abstract:For a balanced data set support vector machine ( SVM ) generally has good performance and generalization, but SVMs can only produce suboptimal results with imbalanced data sets. In this paper, a AS-AdaBoostSVM algorithm was proposed based on SVM. First,by using ADASYN sampling, the density of small class sample in the border area was improved. Then, the decision classifiers was achieved by using RBFSVM as the weak classifiers in AdaBoost algorithm. By comparing the test results on a variety of unbalanced data sets with ADASYN, AdaBoostSVM, SMOTEBoost, it shows that the proposed algorithm is effective and robust.
Keywords:machine learning  imbalanced data  data classfication  ADASYN  AdaBoostSVM
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