机器学习分类算法分析及基于Python的实现

上传者: scoefield | 上传时间: 2019-12-21 21:02:32 | 文件大小: 217KB | 文件类型: zip
本人大四快毕业了,利用寒假的时间把毕业设计《机器学习分类算法分析及基于Python的实现》做了。该资源是用Python实现机器学习分类算法的代码和一些测试数据,如你觉得有需要的话,可自行下载参考。

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评论信息

  • zwszws :
    非常实用,利于提高和理解
    2021-08-26

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