多支持阈值的动态项集挖掘算法比较

Nourhan Abuzayed, B. Ergenç
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引用次数: 3

摘要

频繁项集的挖掘是关联规则挖掘过程的重要组成部分。处理数据库的动态性和项目的多重支持阈值要求是频繁项目集挖掘算法面临的两个重要挑战。现有的动态项集挖掘算法大多是针对单支持阈值设计的,而多支持阈值挖掘算法是静态的。研究了多支持阈值下频繁项集的动态更新问题,提出了基于树的动态CFP-Growth++算法。将提出的算法与我们之前的动态算法dynamic MIS[50]和最近的静态算法CFP-Growth++[2]进行了比较,结果如下;在动态数据库中,1)两种动态算法均优于静态算法cfp - grow++; 2)在内存使用性能上优于静态算法cfp - grow++;3)在执行时间上,动态CFP-Growth++优于动态MIS;动态MIS优于动态CFP-Growth++。简而言之,动态CFP-Growth++和动态MIS在内存使用和执行时间方面存在权衡关系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparison of Dynamic Itemset Mining Algorithms for Multiple Support Thresholds
Mining1 frequent itemsets is an important part of association rule mining process. Handling dynamic aspect of databases and multiple support threshold requirements of items are two important challenges of frequent itemset mining algorithms. Most of the existing dynamic itemset mining algorithms are devised for single support threshold whereas multiple support threshold algorithms are static. This work focuses on dynamic update problem of frequent itemsets under multiple support thresholds and proposes tree-based Dynamic CFP-Growth++ algorithm. Proposed algorithm is compared to our previous dynamic algorithm Dynamic MIS [50] and a recent static algorithm CFP-Growth++ [2] and, findings are; in dynamic database, 1) both of the dynamic algorithms are better than the static algorithm CFP-Growth++, 2) as memory usage performance; Dynamic CFP-Growth++ performs better than Dynamic MIS, 3) as execution time performance; Dynamic MIS is better than Dynamic CFP-Growth++. In short, Dynamic CFP-Growth++ and Dynamic MIS have a trade-off relationship in terms of memory usage and execution time.
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