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SMCA: a general model for mining asynchronous periodic patterns in temporal databases

机译:SMCA:在时态数据库中挖掘异步周期性模式的通用模型

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摘要

Mining periodic patterns in time series databases is an important data mining problem with many applications. Previous studies have considered synchronous periodic patterns where misaligned occurrences are not allowed. However, asynchronous periodic pattern mining has received less attention and only been discussed for a sequence of symbols where each time point contains one event. In this paper, we propose a more general model of asynchronous periodic patterns from a sequence of symbol sets where a time slot can contain multiple events. Three parameters min/spl I.bar/rep, max/spl I.bar/dis, and global/spl I.bar/rep are employed to specify the minimum number of repetitions required for a valid segment of nondisrupted pattern occurrences, the maximum allowed disturbance between two successive valid segments, and the total repetitions required for a valid sequence. A 4-phase algorithm is devised to discover periodic patterns from a time series database presented in vertical format. The experiments demonstrate good performance and scalability with large frequent patterns.
机译:在时间序列数据库中挖掘周期性模式是许多应用程序中的重要数据挖掘问题。先前的研究已经考虑了同步周期模式,其中不允许出现未对齐的情况。但是,异步周期性模式挖掘的关注度较小,仅针对每个时间点包含一个事件的一系列符号进行了讨论。在本文中,我们从一个时隙可以包含多个事件的符号集序列中提出了一个更通用的异步周期模式模型。使用三个参数min / spl I.bar/rep,max / spl I.bar/dis和global / spl I.bar/rep来指定有效段的无中断模式出现所需的最小重复次数,最大允许两个连续有效段之间的干扰,以及有效序列所需的总重复次数。设计了一种四阶段算法,以从以垂直格式显示的时间序列数据库中发现周期性模式。实验证明了良好的性能和可扩展性以及大量的频繁模式。

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