학술논문

Anomaly Detection in Graph-Based Data Utilizing Graph Topology
Document Type
Conference
Source
2024 Annual Reliability and Maintainability Symposium (RAMS) Reliability and Maintainability Symposium (RAMS), 2024 Annual. :1-6 Jan, 2024
Subject
Aerospace
Engineering Profession
General Topics for Engineers
Power, Energy and Industry Applications
Transportation
Training
Adaptation models
Uncertainty
Machine learning algorithms
Random access memory
Machine learning
Topology
Anomaly detection
Graph Neural Networks
Graph Topology
Language
ISSN
2577-0993
Abstract
This paper presents a novel framework for anomaly detection in complex networks using Graph Neural Networks (GNNs). By incorporating graph topology and node attributes, the proposed model offers improved accuracy and detection capabilities compared to traditional methods. The proposed framework utilizes a graph autoencoder with decoders for node features and the adjacency matrix, capturing the underlying structure of the graph. Topological features such as centrality and clustering coefficients are integrated to enhance the model's performance. To address the complexities of the model, a generic algorithm is employed for efficient optimization. Our approach demonstrates superior performance compared to traditional autoencoders and other machine learning models. The model's effectiveness in identifying anomalous nodes and subgraphs highlights the importance of considering both structural components and node attributes in anomaly detection with GNNs. One of the key advantages of the proposed model is its adaptability to various datasets and node features. Training the model with multiple graphs or instances allows for handling diverse working conditions and uncertainties.