Online change detection techniques in time series: An overview

Bernadin Namoano, A. Starr, C. Emmanouilidis, C. Ruiz-Carcel
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引用次数: 7

Abstract

Time-series change detection has been studied in several fields. From sensor data, engineering systems, medical diagnosis, and financial markets to user actions on a network, huge amounts of temporal data are generated. There is a need for a clear separation between normal and abnormal behaviour of the system in order to investigate causes or forecast change. Characteristics include irregularities, deviations, anomalies, outliers, novelties or surprising patterns. The efficient detection of such patterns is challenging, especially when constraints need to be taken into account, such as the data velocity, volume, limited time for reacting to events, and the details of the temporal sequence.This paper reviews the main techniques for time series change point detection, focusing on online methods. Performance criteria including complexity, time granularity, and robustness is used to compare techniques, followed by a discussion about current challenges and open issues.
时间序列中的在线变更检测技术:概述
时间序列变化检测已经在多个领域得到了研究。从传感器数据、工程系统、医疗诊断、金融市场到网络上的用户行为,都会产生大量的时间数据。有必要明确区分系统的正常和异常行为,以便调查原因或预测变化。特征包括不规则,偏差,异常,异常值,新奇或令人惊讶的模式。这种模式的有效检测具有挑战性,特别是在需要考虑约束条件时,例如数据速度、容量、对事件作出反应的有限时间以及时间序列的细节。本文综述了时间序列变化点检测的主要技术,重点介绍了在线方法。性能标准包括复杂性、时间粒度和健壮性,用于比较技术,然后讨论当前的挑战和开放的问题。
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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