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An Efficient Method for Discovering Motifs in Large Time Series

机译:在大时间序列中发现母题的有效方法

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Time series motif is a previously unknown pattern appearing frequently in a time series. An efficient motif discovery algorithm for time series would be useful as a tool for summarizing massive time series databases as well as many other advanced time series data mining tasks. In this paper, we propose a new efficient algorithm, called EP-BIRCH, for finding motifs in large time series datasets. This algorithm is more efficient than MK algorithm and stable to the changes of input parameters and these parameters are easy to be determined through experiments. The instances of a discovered motif may be of different lengths and user does not have to predefine the length of the motif.
机译:时间序列主题是一个在时间序列中频繁出现的先前未知的模式。一种有效的时间序列主题发现算法,可用作汇总大量时间序列数据库以及许多其他高级时间序列数据挖掘任务的工具。在本文中,我们提出了一种新的高效算法,称为EP-BIRCH,用于在大型时间序列数据集中查找图案。该算法比MK算法更有效,并且对输入参数的变化稳定,并且这些参数很容易通过实验确定。发现的主题的实例可以具有不同的长度,并且用户不必预先定义主题的长度。

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