Paper
8 June 2024 GNAR: graph contrastive learning networks with adaptive readouts for anomaly detection
Changcheng Wan, Suixiang Gao
Author Affiliations +
Proceedings Volume 13171, Third International Conference on Algorithms, Microchips, and Network Applications (AMNA 2024); 1317128 (2024) https://doi.org/10.1117/12.3031986
Event: 3rd International Conference on Algorithms, Microchips and Network Applications (AMNA 2024), 2024, Jinan, China
Abstract
Recent advancements in graph neural networks (GNNs) have prompted diverse research endeavors focused on utilizing GNNs for anomaly detection. The fundamental concept revolves around harnessing the inherent expressive capabilities of GNNs to acquire meaningful node representations, aiming to distinguish between anomalous and normal nodes in the embedding space. However, prior methods have often employed simple readout modules (such as sum, mean, or max functions) for subgraph aggregation, failing to fully exploit subgraph information. In response to this limitation, we propose an anomaly detection application algorithm called “Graph Contrastive Learning Network with Adaptive Readouts” (GNAR), tailored specifically for Graph Anomaly Detection (GAD) tasks. Through extensive experiments on three famous public datasets, we consistently observe that GNAR outperforms baseline methods.
(2024) Published by SPIE. Downloading of the abstract is permitted for personal use only.
Changcheng Wan and Suixiang Gao "GNAR: graph contrastive learning networks with adaptive readouts for anomaly detection", Proc. SPIE 13171, Third International Conference on Algorithms, Microchips, and Network Applications (AMNA 2024), 1317128 (8 June 2024); https://doi.org/10.1117/12.3031986
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KEYWORDS
Machine learning

Data modeling

Education and training

Neural networks

Matrices

Detection and tracking algorithms

Mining

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