一种挖掘兴趣最大关联规则的有效算法

Fatima Mohammed Al-Kebsi, Khalil Al-Wagih, B. Al-Maqaleh
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引用次数: 0

摘要

现有算法大多集中在基于传统支持度-置信度框架的关联规则挖掘(ARM)上。这些算法产生了大量冗余规则,其中大多数与用户无关或不暗示相关项集之间的关联关系。本文提出了一种有效的算法,该算法结合了最大频繁项集(mfi)的生成,保证了冗余和相关分析的去除。该算法将支持全置信度测度作为一种新的约束框架,在mfi挖掘过程中进行深度推入,直接从大数据集中生成全置信度相关最大频繁项集(accmfi)的约简完整集。因此,所生成的accmfi被认为是发现有趣最大关联规则(imar)的新基础。实验结果证明了该算法的实用性和有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Effective Algorithm for Mining Interesting Maximal Association Rules
Most existing algorithms focus on Association Rules Mining (ARM) based on a traditional support-confidence framework. These algorithms produce a large number of redundant rules, the majority of which are irrelevant to the users or do not imply a correlation relationship between related itemsets. In this paper, an effective algorithm that incorporates the generation of Maximal Frequent Itemsets (MFIs) that ensures removal of redundancy and correlation analysis has been adopted as an interesting measure is suggested. The proposed algorithm integrates the support-all-confidence measures as a new constraint framework to be pushed deep during the mining process of MFIs to generate a reduced and complete set of All-Confident Correlated Maximal Frequent Itemsets (ACCMFIs) directly from large datasets. Consequently, the generated ACCMFIs are considered as a new basis for the discovery of Interesting Maximal Association Rules (IMARs). The proposed algorithm has been developed, and the experimental results demonstrate its utility and effectiveness.
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