粗糙集约简算法的实现(代码)

上传者: zwq1987 | 上传时间: 2019-12-21 22:25:19 | 文件大小: 38KB | 文件类型: zip
粗糙集约简算法 主要是从别人那边搞来的,为了方便大家,作为研究中不停使用的粗糙集方面想必大家也是很头疼代码问题

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评论信息

  • am88888888am :
    下载看了一下,共有8个程序。是关于模糊粗糙集的,可以学习一下
    2021-06-10
  • am88888888am :
    下载看了一下,共有8个程序。是关于模糊粗糙集的,可以学习一下
    2021-06-10
  • weixin_39814560 :
    很多种粗糙集代码,但是还是有点看不懂
    2019-10-27
  • zhouhanhaha :
    很多种粗糙集代码,但是还是有点看不懂
    2019-10-27
  • jnhj3032 :
    下载看了一下,共有8个程序。是关于模糊粗糙集的,可以学习一下。
    2014-08-04
  • jnhj3032 :
    下载看了一下,共有8个程序。是关于模糊粗糙集的,可以学习一下。
    2014-08-04
  • cluby1985 :
    是MATLAB的,本想下载C语言的
    2013-12-04
  • cluby1985 :
    是MATLAB的,本想下载C语言的
    2013-12-04
  • yxyyxy8868 :
    共有8个matlab代码,与主题相符。算法跑的起来,代码也写得比较工整,有注释很值得参考。
    2013-06-04
  • 醉梦逸 :
    共有8个matlab代码,与主题相符。算法跑的起来,代码也写得比较工整,有注释很值得参考。
    2013-06-04

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