矩阵轮廓XIII:时间序列片段:时间序列数据挖掘的一种新基元

Shima Imani, Frank Madrid, W. Ding, S. Crouter, Eamonn J. Keogh
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引用次数: 36

摘要

数据分析师面对新数据源时最基本的查询可能是“显示一些具有代表性/典型的数据”。回答这个问题在许多领域是微不足道的,但令人惊讶的是,在大的时间序列数据集是非常困难的。主要的困难不在于时间或空间的复杂性,而在于定义在这个领域中具有代表性的数据意味着什么。在这项工作中,我们证明了明显的候选定义:motif, shapelets,聚类中心,随机样本等,都是糟糕的选择。因此,我们引入了时间序列片段,一种典型时间序列子序列的新颖表示。除了用于可视化和总结大量时间序列集合之外,我们还展示了时间序列片段用于大型时间序列集合的高级比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Matrix Profile XIII: Time Series Snippets: A New Primitive for Time Series Data Mining
Perhaps the most basic query made by a data analyst confronting a new data source is "Show me some representative/typical data." Answering this question is trivial in many domains, but surprisingly, it is very difficult in large time series datasets. The major difficulty is not time or space complexity, but defining what it means to be representative data in this domain. In this work, we show that the obvious candidate definitions: motifs, shapelets, cluster centers, random samples etc., are all poor choices. Thus motivated, we introduce time series snippets, a novel representation of typical time series subsequences. Beyond their utility for visualizing and summarizing massive time series collections, we show that time series snippets have utility for high-level comparison of large time series collections.
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