Mining Dense Periodic Patterns in Time Series Data

Chang Sheng, W. Hsu, M. Lee
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引用次数: 57

Abstract

Existing techniques to mine periodic patterns in time series data are focused on discovering full-cycle periodic patterns from an entire time series. However, many useful partial periodic patterns are hidden in long and complex time series data. In this paper, we aim to discover the partial periodicity in local segments of the time series data. We introduce the notion of character density to partition the time series into variable-length fragments and to determine the lower bound of each character’s period. We propose a novel algorithm, called DPMiner, to find the dense periodic patterns in time series data. Experimental results on both synthetic and real-life datasets demonstrate that the proposed algorithm is effective and efficient to reveal interesting dense periodic patterns.
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挖掘时间序列数据中的密集周期模式
现有的时间序列数据周期模式挖掘技术侧重于从整个时间序列中发现全周期周期模式。然而,许多有用的部分周期模式隐藏在长而复杂的时间序列数据中。本文的目的是发现时间序列数据局部段的部分周期性。我们引入字符密度的概念,将时间序列划分为可变长度的片段,并确定每个字符周期的下界。我们提出了一种新的算法DPMiner来寻找时间序列数据中的密集周期模式。在合成数据集和真实数据集上的实验结果表明,该算法能够有效地揭示有趣的密集周期模式。
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