Anomaly Detection Based on GCNs and DBSCAN in a Large-Scale Graph
Christopher Retiti Diop Emane,
Sangho Song,
Hyeonbyeong Lee
et al.
Abstract:Anomaly detection is critical across domains, from cybersecurity to fraud prevention. Graphs, adept at modeling intricate relationships, offer a flexible framework for capturing complex data structures. This paper proposes a novel anomaly detection approach, combining Graph Convolutional Networks (GCNs) and Density-Based Spatial Clustering of Applications with Noise (DBSCAN). GCNs, a specialized deep learning model for graph data, extracts meaningful node and edge representations by incorporating graph topolog… Show more
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