LGAT: A novel model for multivariate time series anomaly detection with improved anomaly transformer and learning graph structures

IF 5.5 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Neurocomputing Pub Date : 2024-11-28 DOI:10.1016/j.neucom.2024.129024
Mi Wen , ZheHui Chen , Yun Xiong , YiChuan Zhang
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Abstract

Time series anomaly detection involves identifying data points in continuously collected datasets that deviate from normal patterns. Given that real-world systems often consist of multiple variables, detecting anomalies in multivariate datasets has become a key focus of current research. This challenge has wide-ranging applications across various industries for system maintenance, such as in water treatment and distribution networks, transportation, and autonomous vehicles, thus driving active research in the field of time series anomaly detection. However, traditional methods primarily address this issue by predicting and reconstructing input time steps, but they still suffer from problems of overgeneralization and inconsistency in providing high performance for reasoning about complex dynamics. In response, we propose a novel unsupervised model called LGAT, which can automatically learn graph structures and leverage an enhanced Anomaly Transformer architecture to capture temporal dependencies. Moreover, the model features a new encoder–decoder architecture designed to enhance context extraction capabilities. In particular, the model calculates anomaly scores for multivariate time series anomaly detection by combining the reconstruction of input time series with the model’s computed prior associations and sequential correlations. This model captures inter-variable relationships and exhibit stronger context extraction abilities, making it more sensitive to anomaly detection. Extensive experiments on six common anomaly detection benchmarks further demonstrate the superiority of our approach over other state-of-the-art methods, with an improvement of approximately 1.2% across various metrics.
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基于改进的异常变压器和学习图结构的多元时间序列异常检测新模型
时间序列异常检测涉及识别连续收集的数据集中偏离正常模式的数据点。鉴于现实世界的系统通常由多个变量组成,在多变量数据集中检测异常已成为当前研究的重点。这一挑战在各个行业的系统维护中有着广泛的应用,例如水处理和配电网络、运输和自动驾驶汽车,从而推动了时间序列异常检测领域的积极研究。然而,传统方法主要通过预测和重构输入时间步来解决这一问题,但它们仍然存在过度泛化和不一致的问题,无法为复杂动态的推理提供高性能。作为回应,我们提出了一种新的无监督模型,称为LGAT,它可以自动学习图结构,并利用增强的异常转换器体系结构来捕获时间依赖性。此外,该模型具有新的编码器-解码器架构,旨在增强上下文提取能力。特别是,该模型通过将输入时间序列的重建与模型计算的先验关联和顺序相关性相结合,计算多元时间序列异常检测的异常分数。该模型捕获了变量间的关系,并表现出更强的上下文提取能力,使其对异常检测更敏感。在六个常见的异常检测基准上进行的大量实验进一步证明了我们的方法比其他最先进的方法优越,在各种指标上的改进约为1.2%。
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来源期刊
Neurocomputing
Neurocomputing 工程技术-计算机:人工智能
CiteScore
13.10
自引率
10.00%
发文量
1382
审稿时长
70 days
期刊介绍: Neurocomputing publishes articles describing recent fundamental contributions in the field of neurocomputing. Neurocomputing theory, practice and applications are the essential topics being covered.
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