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Exception rules in association rule mining

机译:关联规则挖掘中的异常规则

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摘要

Previously, exception rules have been defined as association rules with low support and high confidence. Exception rules are important in data mining, as they form rules that can be categorized as an exception. This is the opposite of general association rules in data mining, which focus on high support and high confidence. In this paper, a new approach to mining exception rules is proposed and evaluated. A relationship between exception and positiveegative association rules is considered, whereby the candidate exception rules are generated based on knowledge of the positive and negative association rules in the database. As a result, the exception rules exist in the form of negative, as well as positive, association. A novel exceptionality measure is proposed to evaluate the candidate exception rules. The candidate exceptions with high exceptionality form the final set of exception rules. Algorithms for mining exception rules are developed and evaluated using an exceptionality measurement, the desired performance of which has been proven. (C) 2008 Elsevier Inc. All rights reserved.
机译:以前,例外规则已定义为具有低支持度和高置信度的关联规则。异常规则在数据挖掘中很重要,因为它们形成可以归类为异常的规则。这与数据挖掘中的一般关联规则相反,后者专注于高支持度和高置信度。本文提出并评估了一种新的异常规则挖掘方法。考虑异常和正/负关联规则之间的关系,从而基于数据库中正和负关联规则的知识来生成候选异常规则。结果,异常规则以否定关联和肯定关联的形式存在。提出了一种新颖的例外措施来评估候选例外规则。具有高度例外性的候选例外构成最终的例外规则集。使用例外度量开发和评估用于挖掘异常规则的算法,该度量已经证明了其期望的性能。 (C)2008 Elsevier Inc.保留所有权利。

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