关联规则挖掘的改进Apriori算法研究

Sheng Chai, Jia Yang, Yang Cheng
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引用次数: 82

摘要

关联规则的挖掘效率是数据库知识发现的一个重要领域。Apriori算法是挖掘关联规则的经典算法。为了提高关联规则生成的效率,本文提出了一种改进的Apriori算法。该算法在对候选项集进行剪枝时,采用了一种新的方法来减少子项集的冗余产生,可以直接形成频繁项集,同时剔除具有非频繁子集的候选项集。该算法提高了扫描数据库中信息获取的概率,减小了项目集的潜在规模。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Research of Improved Apriori Algorithm for Mining Association Rules
The efficiency of mining association rules is an important field of Knowledge Discovery in Databases. The Apriori algorithm is a classical algorithm in mining association rules. This paper presents an improved Apriori algorithm to increase the efficiency of generating association rules. This algorithm adopts a new method to reduce the redundant generation of sub-itemsets during pruning the candidate itemsets, which can form directly the set of frequent itemsets and eliminate candidates having a subset that is not frequent in the meantime. This algorithm can raise the probability of obtaining information in scanning database and reduce the potential scale of itemsets.
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