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Mining Top-k Distinguishing Temporal Sequential Patterns from Event Sequences

机译:从事件序列中挖掘Top-k区分时间顺序模式

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Sequential patterns are useful in many areas such as biomedical sequence analysis, web browsing log analysis, and historical banking transaction log analysis. Distinguishing sequential patterns can help characterize the differences between two or more sets/classes of sequences, and can be used to understand those sequence sets/classes and to identify informative features for classification and so on. However, previous studies have not considered how to mine distinguishing sequential patterns from event sequences, where each event in a sequence has an associated timestamp. To fill that gap, this paper considers the mining of distinguishing temporal event patterns (DTEP) from event sequences. After discussing the challenges on DTEP mining, we present DTEP-Miner, a mining method with various pruning techniques, for mining DTEPs with top-k contrast scores. Our empirical study using both real data and synthetic data demonstrates that DTEP-Miner is effective and efficient.
机译:顺序模式在许多领域中都非常有用,例如生物医学序列分析,Web浏览日志分析和历史银行交易日志分析。区分顺序模式可以帮助表征两个或多个序列集/类别之间的差异,并且可以用来理解那些序列集/类别并识别分类的信息性特征,等等。但是,以前的研究没有考虑如何从事件序列中挖掘出区分的顺序模式,其中序列中的每个事件都有相关的时间戳。为了填补这一空白,本文考虑了从事件序列中区分时间事件模式(DTEP)的挖掘。在讨论了DTEP挖掘的挑战之后,我们介绍了DTEP-Miner,这是一种具有多种修剪技术的挖掘方法,用于挖掘具有top-k对比度得分的DTEP。我们使用实际数据和综合数据进行的经验研究表明,DTEP-Miner是有效的。

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