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Updating generalized association rules with evolving taxonomies

机译:使用不断发展的分类法更新广义关联规则

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摘要

Mining generalized association rules among items in the presence of taxonomies has been recognized as an important model for data mining. Earlier work on mining generalized association rules, however, required the taxonomies to be static, ignoring the fact that the taxonomies of items cannot necessarily be kept unchanged. For instance, some items may be reclassified from one hierarchy tree to another for more suitable classification, abandoned from the taxonomies if they will no longer be produced, or added into the taxonomies as new items. Additionally, the analysts might have to dynamically adjust the taxonomies from different viewpoints so as to discover more informative rules. Under these circumstances, effectively updating the discovered generalized association rules is a crucial task. In this paper, we examine this problem and propose two novel algorithms, called Diff_ET and Diff_ET2, to update the discovered frequent itemsets. Empirical evaluation shows that the proposed algorithms are very effective and have good linear scale-up characteristics.
机译:在存在分类法的情况下,在项目之间挖掘广义关联规则已被认为是数据挖掘的重要模型。但是,早期的挖掘广义关联规则的工作要求分类法是静态的,而忽略了项目分类法不一定必须保持不变的事实。例如,某些项目可能会从一个层次结构树重新分类到另一棵树,以进行更合适的分类;如果不再生产它们,则从分类法中放弃;或者作为新项目添加到分类法中。此外,分析人员可能必须从不同角度动态调整分类法,以便发现更多有用的规则。在这种情况下,有效地更新发现的广义关联规则是至关重要的任务。在本文中,我们研究了这个问题,并提出了两种新颖的算法Diff_ET和Diff_ET2,以更新发现的频繁项集。实证评估表明,该算法非常有效,并且具有良好的线性放大特性。

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