Exception rules in association rule mining

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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 positive/negative 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.

论文关键词:Data mining,Association rules,Exception rules,Negative association rules,Association rule mining,Support,Confidence,Exceptionality,Knowledge discovery,Fuzzy association rules

论文评审过程:Available online 15 May 2008.

论文官网地址:https://doi.org/10.1016/j.amc.2008.05.020