Matrix Profile XXIII: Contrast Profile: A Novel Time Series Primitive that Allows Real World Classification

nonymous” Ryan Mercer, S. Alaee, Alireza Abdoli, Shailendra Singh, Amy Murillo, Eamonn J. Keogh
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引用次数: 8

Abstract

Time series data remains a perennially important datatype considered in data mining. In the last decade there has been an increasing realization that time series data can best understood by reasoning about time series subsequences on the basis of their similarity to other subsequences: the two most familiar such time series concepts being motifs and discords. Time series motifs refer to two particularly close subsequences, whereas time series discords indicate subsequences that are far from their nearest neighbors. However, we argue that it can sometimes be useful to simultaneously reason about a subsequence’s closeness to certain data and its distance to other data. In this work we introduce a novel primitive called the Contrast Profile that allows us to efficiently compute such a definition in a principled way. As we will show, the Contrast Profile has many downstream uses, including anomaly detection, data exploration, and preprocessing unstructured data for classification.
矩阵剖面XXIII:对比剖面:一种允许真实世界分类的新型时间序列原语
时间序列数据在数据挖掘中一直是一种重要的数据类型。在过去的十年中,越来越多的人认识到,时间序列数据可以通过基于它们与其他子序列的相似性来推理时间序列子序列来最好地理解:两个最熟悉的时间序列概念是motif和disdise。时间序列基序指的是两个特别接近的子序列,而时间序列不一致指的是远离最近邻居的子序列。然而,我们认为有时同时推断子序列与某些数据的接近程度及其与其他数据的距离是有用的。在这项工作中,我们引入了一种新的原语,称为对比配置文件,它允许我们以一种有原则的方式有效地计算这样的定义。正如我们将展示的,Contrast Profile有许多下游用途,包括异常检测、数据探索和预处理用于分类的非结构化数据。
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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