在线发现和维护时间序列图案

A. Mueen, Eamonn J. Keogh
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引用次数: 135

摘要

重复子序列、时间序列基序的检测问题已经被证明对一些高级数据挖掘算法有很大的实用价值,包括分类、聚类、分割、预测和规则发现。近年来,如何有效地在静态离线数据库中发现这些基序已经成为研究热点。然而,在许多领域,时间序列固有的流性质要求在线发现和维护时间序列主题。在本文中,我们开发了第一个在线motif发现算法,该算法可以在流的最近历史中实时监控和维护motif。该算法的最坏情况更新时间与窗口大小成线性关系,可扩展到维护更复杂的模式结构。相比之下,当前的离线算法要么需要大量的更新时间,要么需要非常昂贵的预处理步骤,这是在线算法根本无法承受的。我们的核心思想允许对我们的算法进行有用的扩展,以处理任意数据速率和发现多维主题。我们通过机器人、声学监测和在线压缩领域的各种案例研究展示了我们算法的实用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Online discovery and maintenance of time series motifs
The detection of repeated subsequences, time series motifs, is a problem which has been shown to have great utility for several higher-level data mining algorithms, including classification, clustering, segmentation, forecasting, and rule discovery. In recent years there has been significant research effort spent on efficiently discovering these motifs in static offline databases. However, for many domains, the inherent streaming nature of time series demands online discovery and maintenance of time series motifs. In this paper, we develop the first online motif discovery algorithm which monitors and maintains motifs exactly in real time over the most recent history of a stream. Our algorithm has a worst-case update time which is linear to the window size and is extendible to maintain more complex pattern structures. In contrast, the current offline algorithms either need significant update time or require very costly pre-processing steps which online algorithms simply cannot afford. Our core ideas allow useful extensions of our algorithm to deal with arbitrary data rates and discovering multidimensional motifs. We demonstrate the utility of our algorithms with a variety of case studies in the domains of robotics, acoustic monitoring and online compression.
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