【24h】

Structures of Association Rule Set

机译:关联规则集的结构

获取原文

摘要

This paper shows a mathematical foundation for almost important features in the problem of discovering knowledge by association rules. The class of frequent itemsets and the association rule set are partitioned into disjoint classes by two equivalence relations based on closures. Thanks to these partitions, efficient parallel algorithms for mining frequent itemsets and association rules can be obtained. Practically, one can mine frequent itemsets as well as association rules just in the classes that users take care of. Then, we obtain structures of each rule class using corresponding order relations. For a given relation, each rule class splits into two subsets of basic and consequence. The basic one contains minimal rules and the consequence one includes in the rules that can be deducted from those minimal rules. In the rest, we consider association rule mining based on order relation min. The explicit form of minimal rules according to that relation is shown. Due to unique representations of frequent itemsets through their generators and corresponding eliminable itemsets, operators for deducting all remaining rules are also suggested. Experimental results show that mining association rules based on relation min is better than the ones based on relations of minmin and minMax in terms of reduction in mining times as well as number of basic rules.
机译:本文为通过关联规则发现知识的问题中的几乎重要特征提供了数学基础。频繁项集的类别和关联规则集通过基于闭包的两个等价关系划分为不相交的类别。由于这些分区,可以获得用于挖掘频繁项集和关联规则的有效并行算法。实际上,人们可以只在用户关注的类中挖掘频繁的项目集以及关联规则。然后,我们使用相应的顺序关系获得每个规则类的结构。对于给定的关系,每个规则类都分为基本和结果两个子集。基本规则包含最小规则,结果一个规则中包含可以从这些最小规则中扣除的规则。在其余部分中,我们考虑基于顺序关系min的关联规则挖掘。显示了根据该关系的最小规则的显式形式。由于频繁项集通过其生成器和相应的可消除项集的唯一表示,因此还建议了用于扣除所有剩余规则的运算符。实验结果表明,在减少挖掘次数和减少基本规则数量方面,基于关系min的挖掘关联规则优于基于minmin和minMax的关系挖掘规则。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号