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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >On-line motif detection in time series with SwiftMotif
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On-line motif detection in time series with SwiftMotif

机译:使用SwiftMotif在时间序列中进行在线主题检测

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摘要

This article presents SwiftMotif, a novel technique for on-line motif detection in time series. With this technique, frequently occurring temporal patterns or anomalies can be discovered, for instance. The motif detection is based on a fusion of methods from two worlds: probabilistic modeling and similarity measurement techniques are combined with extremely fast polynomial least-squares approximation techniques. A time series is segmented with a data stream segmentation method, the segments are modeled by means of normal distributions with time-dependent means and constant variances, and these models are compared using a divergence measure for probability densities. Then, using suitable clustering algorithms based on these similarity measures, motifs may be defined. The fast time series segmentation and modeling techniques then allow for an on-line detection of previously defined motifs in new time series with very low run-times. SwiftMotif is suitable for real-time applications, accounts for the uncertainty associated with the occurrence of certain motifs, e.g., due to noise, and considers local variability (i.e., uniform scaling) in the time domain. This article focuses on the mathematical foundations and the demonstration of properties of SwiftMotif-in particular accuracy and run-time-using some artificial and real benchmark time series.
机译:本文介绍了SwiftMotif,这是一种用于在时间序列中进行在线图案检测的新颖技术。通过这种技术,例如,可以发现频繁发生的时间模式或异常。主题检测基于两种世界方法的融合:概率建模和相似性测量技术与极快的多项式最小二乘近似技术相结合。使用数据流分段方法对时间序列进行分段,通过具有时间相关均值和恒定方差的正态分布对分段进行建模,并使用散度度量比较这些模型的概率密度。然后,使用基于这些相似性度量的合适聚类算法,可以定义图案。然后,快速的时间序列分割和建模技术可以以非常低的运行时间在线检测新时间序列中先前定义的图案。 SwiftMotif适用于实时应用,考虑到某些图案出现的不确定性(例如由于噪声),并考虑了时域中的局部可变性(即均匀缩放)。本文着重介绍SwiftMotif的数学基础和特性演示-尤其是准确性和运行时-使用一些人工和真实的基准时间序列。

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