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Main Authors: Chin, Sinchee, Zhang, Fan, Yang, Xiaochen, Xue, Jing-Hao, Yang, Wenming, Jia, Peng, Wang, Guijin, Yingqun, Luo
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2504.02498
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author Chin, Sinchee
Zhang, Fan
Yang, Xiaochen
Xue, Jing-Hao
Yang, Wenming
Jia, Peng
Wang, Guijin
Yingqun, Luo
author_facet Chin, Sinchee
Zhang, Fan
Yang, Xiaochen
Xue, Jing-Hao
Yang, Wenming
Jia, Peng
Wang, Guijin
Yingqun, Luo
contents Time Series Anomaly Detection (TSAD) is essential for uncovering rare and potentially harmful events in unlabeled time series data. Existing methods are highly dependent on clean, high-quality inputs, making them susceptible to noise and real-world imperfections. Additionally, intricate temporal relationships in time series data are often inadequately captured in traditional 1D representations, leading to suboptimal modeling of dependencies. We introduce VISTA, a training-free, unsupervised TSAD algorithm designed to overcome these challenges. VISTA features three core modules: 1) Time Series Decomposition using Seasonal and Trend Decomposition via Loess (STL) to decompose noisy time series into trend, seasonal, and residual components; 2) Temporal Self-Attention, which transforms 1D time series into 2D temporal correlation matrices for richer dependency modeling and anomaly detection; and 3) Multivariate Temporal Aggregation, which uses a pretrained feature extractor to integrate cross-variable information into a unified, memory-efficient representation. VISTA's training-free approach enables rapid deployment and easy hyperparameter tuning, making it suitable for industrial applications. It achieves state-of-the-art performance on five multivariate TSAD benchmarks.
format Preprint
id arxiv_https___arxiv_org_abs_2504_02498
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle VISTA: Unsupervised 2D Temporal Dependency Representations for Time Series Anomaly Detection
Chin, Sinchee
Zhang, Fan
Yang, Xiaochen
Xue, Jing-Hao
Yang, Wenming
Jia, Peng
Wang, Guijin
Yingqun, Luo
Machine Learning
Information Theory
Time Series Anomaly Detection (TSAD) is essential for uncovering rare and potentially harmful events in unlabeled time series data. Existing methods are highly dependent on clean, high-quality inputs, making them susceptible to noise and real-world imperfections. Additionally, intricate temporal relationships in time series data are often inadequately captured in traditional 1D representations, leading to suboptimal modeling of dependencies. We introduce VISTA, a training-free, unsupervised TSAD algorithm designed to overcome these challenges. VISTA features three core modules: 1) Time Series Decomposition using Seasonal and Trend Decomposition via Loess (STL) to decompose noisy time series into trend, seasonal, and residual components; 2) Temporal Self-Attention, which transforms 1D time series into 2D temporal correlation matrices for richer dependency modeling and anomaly detection; and 3) Multivariate Temporal Aggregation, which uses a pretrained feature extractor to integrate cross-variable information into a unified, memory-efficient representation. VISTA's training-free approach enables rapid deployment and easy hyperparameter tuning, making it suitable for industrial applications. It achieves state-of-the-art performance on five multivariate TSAD benchmarks.
title VISTA: Unsupervised 2D Temporal Dependency Representations for Time Series Anomaly Detection
topic Machine Learning
Information Theory
url https://arxiv.org/abs/2504.02498