关联规则Apriori算法的改进与优化方法

Jie Ying Gao, Shaojun Li, F. Qian
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引用次数: 9

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。先验算法是挖掘关联规则的经典算法。提出了一种新的方法来删除大量不需要重复扫描的事务。本文所描述的过程减少了提取频繁项集的数据库次数。提出了一种通过优化频繁项集的连接过程来减少候选项集数量的方法。为此,本文设计了一种基于先验的频繁项集挖掘算法,该算法是对先验算法的改进。经过多次实验,该算法在计算时间上优于先验算法。故障诊断知识获取的仿真结果也验证了先验算法的有效性
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Method of Improvement and Optimization on Association Rules Apriori Algorithm
The efficiency of mining association rules is an important field of knowledge discovery in databases. The algorithm a priori is a classical algorithm in mining association rules. A novel procedure was proposed to delete many transactions which need not be scanned repeatedly. The procedure described in this paper reduced the number of database passes to extract frequent item sets. A method was showed to reduce the number of candidate item sets by optimizing the join procedure of frequent item sets. To this end, the I a priori algorithm for mining frequent item sets, which is the improvement algorithm of a priori, is designed in this article. By a number of experiments, the proposed algorithm outperforms the a priori algorithm in computational time. The simulation results of knowledge acquisition for fault diagnosis also show the validity of I a priori algorithm
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