Litcius/Paper detail

Graph Anomaly Detection in Time Series: A Survey

Thi Kieu Khanh Ho, Ali Karami, Narges Armanfard

2025IEEE Transactions on Pattern Analysis and Machine Intelligence16 citationsDOI

Abstract

With the recent advances in technology, a wide range of systems continue to collect a large amount of data over time and thus generate time series. Time-Series Anomaly Detection (TSAD) is an important task in various time-series applications such as e-commerce, cybersecurity, vehicle maintenance, and healthcare monitoring. However, this task is very challenging as it requires considering both the intra-variable dependency (relationships within a variable over time) and the inter-variable dependency (relationships between multiple variables) existing in time-series data. Recent graph-based approaches have made impressive progress in tackling the challenges of this field. In this survey, we conduct a comprehensive and up-to-date review of TSAD using graphs, referred to as G-TSAD. First, we explore the significant potential of graph representation for time-series data and and its contributions to facilitating anomaly detection. Then, we review state-of-the-art graph anomaly detection techniques, mostly leveraging deep learning architectures, in the context of time series. For each method, we discuss its strengths, limitations, and the specific applications where it excels. Finally, we address both the technical and application challenges currently facing the field, and suggest potential future directions for advancing research and improving practical outcomes.

Topics & Concepts

Anomaly detectionComputer scienceTime seriesArtificial intelligenceSeries (stratigraphy)Pattern recognition (psychology)GraphData miningMachine learningTheoretical computer scienceGeologyPaleontologyAnomaly Detection Techniques and ApplicationsComplex Network Analysis TechniquesNetwork Security and Intrusion Detection