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基于MATLAB的数据挖掘实验

上传者: wower063 | 上传时间:2018/8/7 12:29:47 | 文件大小:2.89MB | 文件类型:rar
基于MATLAB的数据挖掘实验
基于Matlab的数据挖掘实验,次要适用于数据挖掘课程中关于矩阵实验的练习提升。

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评论信息

  • shuzhifenxike:
    谢谢楼主分享,很好的学习材料2014-04-17
  • frouna:
    对我没有用2013-01-20

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