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Matrix Profile for Anomaly Detection on Multidimensional Time Series

Authors :
Yeh, Chin-Chia Michael
Der, Audrey
Saini, Uday Singh
Lai, Vivian
Zheng, Yan
Wang, Junpeng
Dai, Xin
Zhuang, Zhongfang
Fan, Yujie
Chen, Huiyuan
Aboagye, Prince Osei
Wang, Liang
Zhang, Wei
Keogh, Eamonn
Publication Year :
2024

Abstract

The Matrix Profile (MP), a versatile tool for time series data mining, has been shown effective in time series anomaly detection (TSAD). This paper delves into the problem of anomaly detection in multidimensional time series, a common occurrence in real-world applications. For instance, in a manufacturing factory, multiple sensors installed across the site collect time-varying data for analysis. The Matrix Profile, named for its role in profiling the matrix storing pairwise distance between subsequences of univariate time series, becomes complex in multidimensional scenarios. If the input univariate time series has n subsequences, the pairwise distance matrix is a n x n matrix. In a multidimensional time series with d dimensions, the pairwise distance information must be stored in a n x n x d tensor. In this paper, we first analyze different strategies for condensing this tensor into a profile vector. We then investigate the potential of extending the MP to efficiently find k-nearest neighbors for anomaly detection. Finally, we benchmark the multidimensional MP against 19 baseline methods on 119 multidimensional TSAD datasets. The experiments covers three learning setups: unsupervised, supervised, and semi-supervised. MP is the only method that consistently delivers high performance across all setups.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2409.09298
Document Type :
Working Paper