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基于Apriori、FP-Growth及Eclat算法的频繁模式挖掘源程序

上传者: yangliuy | 上传时间:2023/1/30 20:57:21 | 文件大小:3.6MB | 文件类型:rar
基于Apriori、FP-Growth及Eclat算法的频繁模式挖掘源程序
基于Apriori、FP-Growth及Eclat算法的频繁模式挖掘源程序一、DataMiningApriori程序用eclipse打开,把三个测试数据mushroom、accidents和T10I4D100K放置在F:\DataMiningSample\FPmining文件夹下面,即可运转二、FP-growth程序1、包括程序源文件和编译生成的可执行原件2、程序运转方法把FP_Growth.exe可执行文件与三个测试数据mushroom、accidents和T10I4D100K放置在同一个文件夹下面,双击FP_Growth.exe,即可顺序挖掘mushroom、accidents和T10I4D100K事物数据集中的频繁模式,阈值设定见testfpgrowth.cpp文件中的main函数三、Eclat程序直接用eclipse打开执行四、输出的频繁模式及支持度文件示例给出了部分输出文件,由于全部输出文件太大,所有没有全部给出,可以由执行程序得出。
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评论信息

  • wangting3100921002:
    好久之前用的,谢谢分享2019-08-14
  • wangting3100921002:
    好久之前用的,谢谢分享2019-08-14
  • qq_38589843:
    verynice很赞赏2019-05-19
  • qq_38589843:
    verynice很赞赏2019-05-19
  • dong_dongfan:
    谢谢分享,真的不错2019-02-23
  • 昂然击水三千里:
    谢谢分享,真的不错2019-02-23
  • u010185526:
    算法不错,可以运行2018-11-18
  • chenweijason:
    算法不错,可以运行2018-11-18
  • siyuanqin:
    这在寻找相关算法,太好了。2018-02-24
  • 鱼_涟漪:
    这在寻找相关算法,太好了。2018-02-24

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