Mining optimized association rules with categorical and numeric attributes

R. Rastogi, Kyuseok Shim
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引用次数: 170

Abstract

Association rules are useful for determining correlations between attributes of a relation and have applications in marketing, financial and retail sectors. Furthermore, optimized association rules are an effective way to focus on the most interesting characteristics involving certain attributes. Optimized association rules are permitted to contain uninstantiated attributes and the problem is to determine instantiations such that either the support or confidence of the rule is maximized. We generalize the optimized association rules problem in three ways: (1) association rules are allowed to contain disjunctions over uninstantiated attributes; (2) association rules are permitted to contain an arbitrary number of uninstantiated attributes; and (3) uninstantiated attributes can be either categorical or numeric. Our generalized association rules enable us to extract more useful information about seasonal and local patterns involving multiple attributes. We present effective techniques for pruning the search space when computing optimized association rules for both categorical and numeric attributes. Finally, we report the results of our experiments that indicate that our pruning algorithms are efficient for a large number of uninstantiated attributes, disjunctions and values in the domain of the attributes.
挖掘具有分类和数字属性的优化关联规则
关联规则对于确定关系属性之间的相关性非常有用,在市场营销、金融和零售部门都有应用。此外,优化的关联规则是关注涉及某些属性的最有趣特征的有效方法。优化的关联规则允许包含未实例化的属性,问题在于确定实例化,从而使规则的支持度或置信度最大化。我们将优化后的关联规则问题概括为三种方式:(1)允许关联规则包含非实例化属性上的析取;(2)关联规则允许包含任意数量的未实例化属性;(3)未实例化的属性可以是分类的,也可以是数字的。我们的广义关联规则使我们能够提取更多关于涉及多个属性的季节性和本地模式的有用信息。在计算分类和数值属性的优化关联规则时,我们提出了有效的修剪搜索空间的技术。最后,我们报告了我们的实验结果,表明我们的修剪算法对于属性域中大量未实例化的属性、析取和值是有效的。
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