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改进的AdaBoost算法与SVM的组合分类器 被引量:8

Combined classification algorithm based on improved AdaBoost and SVM
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摘要 提出了一种改进的AdaBoost算法与支持向量机组合的分类方法,用来处理多类别分类。采用规则抽样来解决支持向量机分类中正负样本的不平衡性,改进AdaBoost算法,使其在初始化时考虑样本分布稀疏的重要性,有利于稀有类样本的正确划分。实验结果表明,此方法与标准支持向量机分类器相比,泛化性能有一定程度的提高。 A combined classification algorithm based on improved AdaBoost and Support Vector Machine,is proposed in order to deal with the problems of multiclass classification.Adopt a rule sampling to solve the unbalance of samples in the SVM.Improving the AdaBoost makes it consider the importance of sparse sample distribution at the beginning,this is advantageous to the right demarcation of rare sample.Experiment proves this algorithm can raise the generalization ability compared with the standard SVM.
出处 《计算机工程与应用》 CSCD 北大核心 2008年第32期140-142,共3页 Computer Engineering and Applications
基金 陕西省自然科学基础基金项目(the Natural Science Foundation of Shaanxi Province of China under Grant No.2006F50) 航空科学基金项目(No.06ZC31001)。
关键词 ADABOOST 支持向量机 组合分类器 规则抽样 AdaBoost Support Vector Machine(SVM) combined classification rule sampling
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参考文献6

  • 1琚旭,王浩,姚宏亮.基于Boosting的支持向量机组合分类器[J].合肥工业大学学报(自然科学版),2006,29(10):1220-1222. 被引量:7
  • 2Tan Pang-Ning,Steinbach M,Kumar V.Introduction to data mining[M].[S.l.]:Posts & Telecom Publishers Inc,2006.
  • 3Chew Hong-Gunn,Crisp D J,Bogner R E,et al.Target detection in radar imagery using support vector machines with training size biasing[C]//Proceedings of the Sixth International Conference on Control,Automation,Robotics and Vision,Singapore,2000.
  • 4王元珍,乐树彬.基于MultiBoost的最小分类误差算法[J].小型微型计算机系统,2005,26(11):1948-1950. 被引量:2
  • 5Joshi M V,Agarwal R C,Kumar V.Predicting rare classes:Can boosting make any weak learner strong? [C]//Proceedings of the Eighth ACM SIGKDD Conference on Knowledge Discovery and Data Mining(KDD2002), Edmonton, Canada, 2002.
  • 6董乐红,耿国华,周明全.基于Boosting算法的文本自动分类器设计[J].计算机应用,2007,27(2):384-386. 被引量:13

二级参考文献20

  • 1Han Jia-wei. Micheline kamber: data mining:concepts and techniques[M].Morgan Kaufmann Publishers Inc,2001.
  • 2Pfahringer B, Holmes G. Schmidberger G (2001),Wrapping boosters against noise[C].Fourteenth Australian Joint Conference on Artificial Intelligence (AI'01).
  • 3Geoffrey I. Webb :MultiBoosting: a technique for combining boosting and wagging[J].Machine Learning. 2000,40(2): 159-196.
  • 4VapnikVN.统计学习理论的本质[M].北京:清华大学出版社,2000..
  • 5Dietterich T G.Machine learning research:Four current directions[J].AI Magazine,1997,18(4):97-136.
  • 6Schapire R E.A brief introduction to boosting[A].In Proceedings of the Sixteenth International Joint Conference on Artificial Intelligence[C].Stockholm:IJCAI,1999.1 401-1 406.
  • 7Rātsch G,Mika S,Schālkopf B.Constructing boosting algorithms from SVMs:an application to one-class classification[J].Pattern Analysis and Machine Intelligence,2002,24(9):1 184-1 199.
  • 8Yuan-chin Ivan Chang.Boosting SVM with logistic regression[R].Taipei:Institute of Statistical Science,Academia Sinica,2003.75-80.
  • 9Scholkopf B,Burges C J C,Smola A J.Advances in kernel methods-support vector learning[M].Cambridge:MIT Press,1999.185-208.
  • 10Osuna E,Freund R,Girosi F.An improved training algorithm for support vector machines[A].Neural Networks for Signal Processing (Ⅶ)[C].New York:IEEE,1997.276-285.

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