机器学习算法基础

上传者: zc02051126 | 上传时间: 2022-05-06 03:54:11 | 文件大小: 8.94MB | 文件类型: RAR
介绍了基础的分类,聚类,推荐等基础的机器学习算法,每个算法都有相应的python实现

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评论信息

  • sjm070 :
    下下来看一下,非常感谢!
    2017-08-31
  • xujh_csd :
    认真学习了下,收获挺多
    2016-11-28
  • only1apple :
    先下来保存,后面学习下
    2016-01-14
  • zhc199 :
    材料很齐全
    2015-06-03
  • fm200821 :
    下下来看一下,非常感谢!
    2015-04-30

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