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多维时间序列异常检测算法综述
引用本文:胡珉,白雪,徐伟,吴秉键.多维时间序列异常检测算法综述[J].计算机应用,2020,40(6):1553-1564.
作者姓名:胡珉  白雪  徐伟  吴秉键
作者单位:1.上海大学 悉尼工商学院,上海 201800 2.上海大学-上海城建建筑产业化研究中心,上海 200072
摘    要:随着信息化技术不断提高,时序数据规模呈指数级增长,为时间序列异常检测算法发展提供了契机和挑战,也使其逐步成为数据分析领域新增的研究热点。然而,这一方面的研究仍处于初步阶段,研究工作的系统性不强。为此,通过整理和分析国内外文献,将多维时间序列异常检测的研究内容按照逻辑顺序分为"维数约简""时间序列模式表示"和"异常模式发现"三个方面,并对其主流算法进行梳理和归纳,以全面展现当前异常检测的研究现状和特点。在此基础上,还指出了多维时间序列异常检测算法的研究难点和研究趋势,以期对相关理论和应用研究提供有益的参考。

关 键 词:多维时间序列  异常检测  维数约简  时间序列的模式表示  异常模式发现
收稿时间:2019-10-24
修稿时间:2019-12-21

Review of anomaly detection algorithms for multidimensional time series
HU Min,BAI Xue,XU Wei,WU Bingjian.Review of anomaly detection algorithms for multidimensional time series[J].journal of Computer Applications,2020,40(6):1553-1564.
Authors:HU Min  BAI Xue  XU Wei  WU Bingjian
Affiliation:1. SILC Business School, Shanghai University, Shanghai 201800, China
2. SHU-SUCG Research Centre for Building Industrialization, Shanghai University, Shanghai 200072, China
Abstract:With the continuous development of information technology, the scale of time series data has grown exponentially, which provides opportunities and challenges for the development of time series anomaly detection algorithm, making the algorithm in this field gradually become a new research hotspot in the field of data analysis. However, the research in this area is still in the initial stage and the research work is not systematic. Therefore, by sorting out and analyzing the domestic and foreign literature, this paper divides the research content of multidimensional time series anomaly detection into three aspects: dimension reduction, time series pattern representation and anomaly pattern detection in logical order, and summarizes the mainstream algorithms to comprehensively show the current research status and characteristics of anomaly detection. On this basis, the research difficulties and trends of multi-dimensional time series anomaly detection algorithms were summarized in order to provide useful reference for related theory and application research.
Keywords:multidimensional time series  anomaly detection  dimension reduction  time series pattern representation  anomaly pattern detection  
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