Anomaly Detection in Dynamic Graphs: A Comprehensive Survey
- URL: http://arxiv.org/abs/2406.00134v1
- Date: Fri, 31 May 2024 18:54:00 GMT
- Title: Anomaly Detection in Dynamic Graphs: A Comprehensive Survey
- Authors: Ocheme Anthony Ekle, William Eberle,
- Abstract summary: This survey paper presents a comprehensive and conceptual overview of anomaly detection using dynamic graphs.
We focus on existing graph-based anomaly detection (AD) techniques and their applications to dynamic networks.
- Score: 0.23020018305241333
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: This survey paper presents a comprehensive and conceptual overview of anomaly detection using dynamic graphs. We focus on existing graph-based anomaly detection (AD) techniques and their applications to dynamic networks. The contributions of this survey paper include the following: i) a comparative study of existing surveys on anomaly detection; ii) a Dynamic Graph-based Anomaly Detection (DGAD) review framework in which approaches for detecting anomalies in dynamic graphs are grouped based on traditional machine-learning models, matrix transformations, probabilistic approaches, and deep-learning approaches; iii) a discussion of graphically representing both discrete and dynamic networks; and iv) a discussion of the advantages of graph-based techniques for capturing the relational structure and complex interactions in dynamic graph data. Finally, this work identifies the potential challenges and future directions for detecting anomalies in dynamic networks. This DGAD survey approach aims to provide a valuable resource for researchers and practitioners by summarizing the strengths and limitations of each approach, highlighting current research trends, and identifying open challenges. In doing so, it can guide future research efforts and promote advancements in anomaly detection in dynamic graphs. Keywords: Graphs, Anomaly Detection, dynamic networks,Graph Neural Networks (GNN), Node anomaly, Graph mining.
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