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Hauptverfasser: Sellam, Abdellah Zakaria, Benaissa, Ilyes, Taleb-Ahmed, Abdelmalik, Patrono, Luigi, Distante, Cosimo
Format: Preprint
Veröffentlicht: 2025
Schlagworte:
Online-Zugang:https://arxiv.org/abs/2502.07858
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author Sellam, Abdellah Zakaria
Benaissa, Ilyes
Taleb-Ahmed, Abdelmalik
Patrono, Luigi
Distante, Cosimo
author_facet Sellam, Abdellah Zakaria
Benaissa, Ilyes
Taleb-Ahmed, Abdelmalik
Patrono, Luigi
Distante, Cosimo
contents Anomaly detection in time series is essential for industrial monitoring and environmental sensing, yet distinguishing anomalies from complex patterns remains challenging. Existing methods like the Anomaly Transformer and DCdetector have progressed, but they face limitations such as sensitivity to short-term contexts and inefficiency in noisy, non-stationary environments. To overcome these issues, we introduce MAAT, an improved architecture that enhances association discrepancy modeling and reconstruction quality. MAAT features Sparse Attention, efficiently capturing long-range dependencies by focusing on relevant time steps, thereby reducing computational redundancy. Additionally, a Mamba-Selective State Space Model is incorporated into the reconstruction module, utilizing a skip connection and Gated Attention to improve anomaly localization and detection performance. Extensive experiments show that MAAT significantly outperforms previous methods, achieving better anomaly distinguishability and generalization across various time series applications, setting a new standard for unsupervised time series anomaly detection in real-world scenarios.
format Preprint
id arxiv_https___arxiv_org_abs_2502_07858
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Mamba Adaptive Anomaly Transformer with association discrepancy for time series
Sellam, Abdellah Zakaria
Benaissa, Ilyes
Taleb-Ahmed, Abdelmalik
Patrono, Luigi
Distante, Cosimo
Machine Learning
Anomaly detection in time series is essential for industrial monitoring and environmental sensing, yet distinguishing anomalies from complex patterns remains challenging. Existing methods like the Anomaly Transformer and DCdetector have progressed, but they face limitations such as sensitivity to short-term contexts and inefficiency in noisy, non-stationary environments. To overcome these issues, we introduce MAAT, an improved architecture that enhances association discrepancy modeling and reconstruction quality. MAAT features Sparse Attention, efficiently capturing long-range dependencies by focusing on relevant time steps, thereby reducing computational redundancy. Additionally, a Mamba-Selective State Space Model is incorporated into the reconstruction module, utilizing a skip connection and Gated Attention to improve anomaly localization and detection performance. Extensive experiments show that MAAT significantly outperforms previous methods, achieving better anomaly distinguishability and generalization across various time series applications, setting a new standard for unsupervised time series anomaly detection in real-world scenarios.
title Mamba Adaptive Anomaly Transformer with association discrepancy for time series
topic Machine Learning
url https://arxiv.org/abs/2502.07858