Sequential Association Rule Mining with Time Lags

作者:Sherri K. Harms, Jitender S. Deogun

摘要

This paper presents MOWCATL, an efficient method for mining frequent association rules from multiple sequential data sets. Our goal is to find patterns in one or more sequences that precede the occurrence of patterns in other sequences. Recent work has highlighted the importance of using constraints to focus the mining process on the association rules relevant to the user. To refine the data mining process, this approach introduces the use of separate antecedent and consequent inclusion constraints, in addition to the traditional frequency and support constraints in sequential data mining. Moreover, separate antecedent and consequent maximum window widths are used to specify the antecedent and consequent patterns that are separated by either a maximal width time lag or a fixed width time lag.

论文关键词:sequential rule discovery, time lag, knowledge discovery, drought risk management

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论文官网地址:https://doi.org/10.1023/A:1025824629047