Discovering hybrid temporal patterns from sequences consisting of point- and interval-based events

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摘要

Previous sequential pattern mining studies have dealt with either point-based event sequences or interval-based event sequences. In some applications, however, event sequences may contain both point-based and interval-based events. These sequences are called hybrid event sequences. Since the relationships among both kinds of events are more diversiform, the information obtained by discovering patterns from these events is more informative. In this study we introduce a hybrid temporal pattern mining problem and develop an algorithm to discover hybrid temporal patterns from hybrid event sequences. We carry out an experiment using both synthetic and real stock price data to compare our algorithm with the traditional algorithms designed exclusively for mining point-based patterns or interval-based patterns. The experimental results indicate that the efficiency of our algorithm is satisfactory. In addition, the experiment also shows that the predicting power of hybrid temporal patterns is higher than that of point-based or interval-based patterns.

论文关键词:Data mining,Hybrid temporal pattern,Temporal pattern,Sequential pattern,Hybrid event sequences

论文评审过程:Received 2 April 2008, Revised 25 June 2009, Accepted 26 June 2009, Available online 5 July 2009.

论文官网地址:https://doi.org/10.1016/j.datak.2009.06.010