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svm分类器的实现(matlab)

上传者: cheris_zhang | 上传时间:2015/5/18 19:49:01 | 文件大小:143KB | 文件类型:rar
svm分类器的实现(matlab)
数据发掘中svm分类器的实现,在matlab中编写

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资源详情

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评论信息

  • fanpengcs:
    不错,谢谢分享!!2018-08-10
  • huntersdg:
    SVM是很经典的分类器,但原始的算法是二分类,不知版主的是否可以实现多分类问题?2018-04-17
  • Hannah:
    不错,谢谢分享!!2017-06-10
  • abc1035144364:
    还在学习过程中2017-05-23
  • chenxjchenxiaoj:
    可以学到相关的知识2016-11-08

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