有趣频繁项集挖掘的一种新的时间度量

A. Omari
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引用次数: 1

摘要

频繁项目集挖掘帮助数据挖掘者在大型事务数据库中搜索强关联的项目(和事务)。由于频繁项集的数量通常非常大,对于人类用户来说难以管理,因此提出了挖掘有趣规则的方法来定义它们的有意义和总结的表示。此外,在文献中提出了许多措施来确定规则的有趣性。在本文中,我们引入了一种新的感兴趣频繁项集挖掘的时间度量。这种度量基于这样的想法,即有趣的频繁项集主要被许多最近的事务所覆盖。该方法通过最小化搜索间隔来减少频繁项集的搜索成本。此外,该度量可用于改进Apriori算法实现的搜索策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A new temporal measure for interesting frequent itemset mining
Frequent itemset mining assists the data miner in searching for strongly associated items (and transactions) in large transaction databases. Since the number of frequent itemsets is usually extremely large and unmanageable for a human user, methods for mining interesting rules have been proposed to define meaningful and summarized representations of them. Furthermore, many measures have been proposed in the literature to determine the interestingness of the rule. In this paper, we introduce a new temporal measure for interesting frequent itemset mining. This measure is based on the idea that interesting frequent itemsets are mainly covered by many recent transactions. This measure reduces the cost of searching for frequent itemsets by minimizing the search interval. Furthermore, this measure can be used to improve the search strategy implemented by the Apriori algorithm.
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