Time series anomaly detection based on shapelet learning

被引:37
|
作者
Beggel, Laura [1 ,2 ]
Kausler, Bernhard X. [1 ]
Schiegg, Martin [1 ]
Pfeiffer, Michael [1 ]
Bischl, Bernd [2 ]
机构
[1] Robert Bosch GmbH, Bosch Ctr Artificial Intelligence, Robert Bosch Campus 1, D-71272 Renningen, Germany
[2] Ludwig Maximilians Univ Munchen, Dept Stat, Munich, Germany
关键词
Unsupervised learning; Feature learning; Support vector data description; Block-coordinate descent;
D O I
10.1007/s00180-018-0824-9
中图分类号
O21 [概率论与数理统计]; C8 [统计学];
学科分类号
020208 ; 070103 ; 0714 ;
摘要
We consider the problem of learning to detect anomalous time series from an unlabeled data set, possibly contaminated with anomalies in the training data. This scenario is important for applications in medicine, economics, or industrial quality control, in which labeling is difficult and requires expensive expert knowledge, and anomalous data is difficult to obtain. This article presents a novel method for unsupervised anomaly detection based on the shapelet transformation for time series. Our approach learns representative features that describe the shape of time series stemming from the normal class, and simultaneously learns to accurately detect anomalous time series. An objective function is proposed that encourages learning of a feature representation in which the normal time series lie within a compact hypersphere of the feature space, whereas anomalous observations will lie outside of a decision boundary. This objective is optimized by a block-coordinate descent procedure. Our method can efficiently detect anomalous time series in unseen test data without retraining the model by reusing the learned feature representation. We demonstrate on multiple benchmark data sets that our approach reliably detects anomalous time series, and is more robust than competing methods when the training instances contain anomalous time series.
引用
收藏
页码:945 / 976
页数:32
相关论文
共 50 条
  • [31] Fusion Learning Based Unsupervised Anomaly Detection for Multi-Dimensional Time Series
    Zhou X.
    Wang Y.
    Xu H.
    Liu M.
    Jisuanji Yanjiu yu Fazhan/Computer Research and Development, 2023, 60 (03): : 496 - 508
  • [32] Stochastic Learning Automata-Based Time Series Analysis for Network Anomaly Detection
    Yasami, Yasser
    Mozaffari, Saadat Pour
    Khorsandi, Siavash
    2008 INTERNATIONAL CONFERENCE ON TELECOMMUNICATIONS, VOLS 1 AND 2, 2008, : 313 - 318
  • [33] Machine Learning-Based Anomaly Detection for Multivariate Time Series With Correlation Dependency
    Chauhan, Shashank
    Lee, Sudong
    IEEE ACCESS, 2022, 10 : 132062 - 132070
  • [34] Time Series Anomaly Detection via Reinforcement Learning-Based Model Selection
    Zhang, Jiuqi Elise
    Wu, Di
    Boulet, Benoit
    2022 IEEE CANADIAN CONFERENCE ON ELECTRICAL AND COMPUTER ENGINEERING (CCECE), 2022, : 193 - 199
  • [35] Towards Machine Learning-based Anomaly Detection on Time-Series Data
    Vajda, Daniel
    Pekar, Adrian
    Farkas, Karoly
    INFOCOMMUNICATIONS JOURNAL, 2021, 13 (01): : 35 - 44
  • [36] Machine Learning-Based Anomaly Detection for Multivariate Time Series with Correlation Dependency
    Chauhan, Shashank
    Lee, Sudong
    IEEE Access, 2022, 10 : 132062 - 132070
  • [37] Hydrologic Time Series Anomaly Detection Based on Flink
    Ye, Feng
    Liu, Zihao
    Liu, Qinghua
    Wang, Zhijian
    MATHEMATICAL PROBLEMS IN ENGINEERING, 2020, 2020
  • [38] NLP Based Anomaly Detection for Categorical Time Series
    Horak, Matthew
    Chandrasekaran, Sowmya
    Tobar, Giovanni
    2022 IEEE 23RD INTERNATIONAL CONFERENCE ON INFORMATION REUSE AND INTEGRATION FOR DATA SCIENCE (IRI 2022), 2022, : 27 - 34
  • [39] Anomaly detection in time series based on interval sets
    Ren, Huorong
    Liu, Mingming
    Liao, Xiujuan
    Liang, Li
    Ye, Zhixing
    Li, Zhiwu
    IEEJ TRANSACTIONS ON ELECTRICAL AND ELECTRONIC ENGINEERING, 2018, 13 (05) : 757 - 762
  • [40] Unsupervised diffusion based anomaly detection for time series
    Zuo, Haiwei
    Zhu, Aiqun
    Zhu, Yanping
    Liao, Yinping
    Li, Shiman
    Chen, Yun
    APPLIED INTELLIGENCE, 2024, 54 (19) : 8968 - 8981