Download PDFOpen PDF in browserAdvancing Graph Anomaly Detection with Energy-Based Models: a Comprehensive FrameworkEasyChair Preprint 1548513 pages•Date: November 28, 2024AbstractGraph anomaly detection has emerged as a critical area in understanding complex networks. This study proposes a novel framework leveraging Energy-Based Models (EBMs) to detect anomalies in graph-structured data efficiently. By integrating graph neural networks (GNNs) with EBMs, we aim to exploit structural, relational, and feature-level information to identify outliers with high accuracy. Experimental results on benchmark datasets demonstrate superior performance compared to state-of-the-art methods, highlighting the robustness of our approach. Keyphrases: Graph Neural Networks, energy-based models, graph anomaly detection, machine learning, outlier detection
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