关联规则挖掘的优化

Polla Fatah, I. Hamarash
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引用次数: 3

摘要

介绍了一种时间记忆域关联规则挖掘的优化方法。该方法将传统数据挖掘算法的运行模式分为两个阶段。第一阶段的设计是计算每个事务中的所有项目集及其频率(不进行修剪),并在数据库中索引它们的积累情况。这个过程只需要每个事务的取取周期一次,合理的减少了取取事务的I/O。在第二阶段,在规则生成中使用项目集及其频率。本文设计、实现、编码了一种新的算法,并在实际数据上进行了验证和测试。该方法使用户能够仅使用第二阶段更改查询和标准,从而有效地降低了成本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimization of association rule mining
This paper introduces an optimization approach for association rule mining in the time-memory domain. The approach splits the running mode of the traditional data mining algorithm into two phases. The first phase is designed to calculate all item sets in every transaction together with their frequencies (without pruning) and indexes their accumulation in a database. This procedure needs the fetch cycle of each transaction only once which reduces fetching transactions' I/O reasonably. In the second phase, the item sets and their frequencies are used in rule producing. a new algorithm has been designed, implemented, coded, verified and tested on real data. The approach enables users to change their queries and criteria using the second phase only which reduces the cost effectively.
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