4.6 Article

Unsupervised Tensor Based Feature Extraction From Multivariate Time Series

期刊

IEEE ACCESS
卷 11, 期 -, 页码 116277-116295

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/ACCESS.2023.3326073

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Feature extraction; multivariate time series; tensor decomposition; Tucker decomposition; clustering; outlier detection; unsupervised learning

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This study proposes a tensor-based feature extraction method (UFEKT) for clustering and outlier detection of multivariate time series. The method constructs feature vectors for subsequences by considering both time and variable associations, and can be used as a preprocessing technique for clustering and outlier detection algorithms.
Clustering and outlier detection for multivariate time series are essential tasks in data mining fields and many algorithms have been developed for this purpose. However, these tasks remain challenging because both time-wise and variable-wise associations should be taken into account to treat multivariate time series appropriately. We propose a tensor based feature extraction method called UFEKT, which focuses on subsequences to account for the time-wise association and constructs a feature vector for each subsequence by applying tensor decomposition to account for the variable-wise association. This method is simple and can be used as an effective means of preprocessing for clustering and outlier detection algorithms. We show empirically that UFEKT leads to superior performance on various popularly used clustering algorithms such as K -means and DBSCAN and outlier detection algorithm such as the kappa -nearest neighbor and LOF.

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