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Ranking and significance of variable-length similarity-based time series motifs

机译:基于可变长度相似度的时间序列主题的排名和重要性

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摘要

The detection of very similar patterns in a time series, commonly called motifs, has received continuous and increasing attention from diverse scientific communities. In particular, recent approaches for discovering similar motifs of different lengths have been proposed. In this work, we show that such variable-length similarity-based motifs cannot be directly compared, and hence ranked, by their normalized dissimilarities. Specifically, we find that length-normalized motif dissimilarities still have intrinsic dependencies on the motif length, and that lowest dissimilarities are particularly affected by this dependency. Moreover, we find that such dependencies are generally non-linear and change with the considered data set and dissimilarity measure. Based on these findings, we propose a solution to rank (previously obtained) motifs of different lengths and measure their significance. This solution relies on a compact but accurate model of the dissimilarity space, using a beta distribution with three parameters that depend on the motif length in a non-linear way. We believe the incomparability of variable-length dissimilarities could have an impact beyond the field of time series, and that similar modeling strategies as the one used here could be of help in a more broad context and in diverse application scenarios. (C) 2016 Elsevier Ltd. All rights reserved.
机译:时间序列中非常相似的模式(通常称为主题)的检测受到了不同科学界的持续关注,并日益受到关注。特别地,已经提出了用于发现不同长度的相似图案的最新方法。在这项工作中,我们表明,基于可变长度相似度的基序不能直接通过归一化的相似度进行比较,从而进行排名。具体而言,我们发现长度标准化的基序差异仍然对基元长度具有内在依赖性,并且最低的差异特别受此依赖性影响。此外,我们发现这种依赖关系通常是非线性的,并随所考虑的数据集和不相似性度量而变化。基于这些发现,我们提出了一种解决方案,可以对不同长度的图案进行排序(先前获得的)并衡量其重要性。该解决方案使用具有三个参数的beta分布,依赖于紧凑而精确的相异空间模型,所述三个参数以非线性方式取决于图案长度。我们认为,可变长度差异的不可比性可能会对时间序列以外的领域产生影响,并且与此处使用的建模策略类似的建模策略可能会在更广泛的上下文中和不同的应用场景中提供帮助。 (C)2016 Elsevier Ltd.保留所有权利。

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