Updating high average-utility itemsets in dynamic databases

Guo-Cheng Lan, Chun-Wei Lin, T. Hong, V. Tseng
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引用次数: 7

Abstract

In this paper, a maintenance algorithm for average-utility mining is proposed to update derived high average-utility itemsets in dynamic databases. It first calculates the count difference of modified itemsets and then partitions them into four parts according to whether they are high upper-bound average-utility itemsets in the original database and whether their count difference is positive or negative. Each part is then processed in its own way. Experimental results show the proposed maintenance algorithm runs faster than the two-phase approach for mining high average-utility itemsets in dynamic databases.
更新动态数据库中的高平均效用项集
本文提出了一种平均效用挖掘维护算法,用于更新动态数据库中导出的高平均效用项集。首先计算修改后的项目集的计数差,然后根据修改后的项目集在原始数据库中是否是高上界平均效用项目集,以及它们的计数差是正的还是负的,将修改后的项目集划分为四部分。然后,每个零件都以自己的方式加工。实验结果表明,对于动态数据库中高平均效用项集的挖掘,所提出的维护算法比两阶段方法运行速度更快。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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