Elastic Time Series Motifs and Discords

Diego Furtado Silva, Gustavo E. A. P. A. Batista
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引用次数: 6

Abstract

The recent proposal of the Matrix Profile (MP) has brought the attention of the time series community to the usefulness and versatility of the similarity joins. This primitive has numerous applications including the discovery of time series motifs and discords. However, the original MP algorithm has two prominent limitations: the algorithm only works for Euclidean distance (ED) and it is sensitive to the subsequences length. Is this work, we extend the MP algorithm to overcome both limitations. We use a recently proposed variant of Dynamic Time Warping (DTW), the Prefix and Suffix Invariant DTW (PSI-DTW) distance. The PSI-DTW allows invariance to warp and spurious endpoints caused by segmenting subsequences and has a side-effect of supporting the match of subsequences with different lengths. Besides, we propose a suite of simple methods to speed up the MP calculation, making it more than one order of magnitude faster than a straightforward implementation and providing an anytime feature. We show that using PSI-DTW avoids false positives and false dismissals commonly observed by applying ED, improving the time series motifs and discords discovery in several application domains.
弹性时间序列的主题和不和谐
最近提出的矩阵轮廓(Matrix Profile, MP)引起了时间序列界对相似性连接的实用性和通用性的关注。这个原语有许多应用,包括发现时间序列的图案和不和谐。然而,原始的MP算法有两个突出的局限性:该算法只适用于欧几里得距离(ED)和对子序列长度敏感。在这项工作中,我们扩展了MP算法来克服这两个限制。我们使用了最近提出的动态时间扭曲(DTW)的一种变体,前缀和后缀不变量DTW (PSI-DTW)距离。PSI-DTW允许不变性扭曲和由分段子序列引起的伪端点,并且具有支持不同长度子序列匹配的副作用。此外,我们提出了一套简单的方法来加速MP计算,使其比直接实现快一个数量级以上,并提供随时可用的功能。我们表明,使用PSI-DTW可以避免误报和误解雇,从而在多个应用领域改善时间序列基序和不一致发现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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