TL;DR
This paper introduces a contrastive self-supervised learning framework for anomaly detection in attributed networks, leveraging local information and scalable training to outperform existing methods.
Contribution
It proposes a novel contrastive learning approach that fully exploits local network information and scales efficiently to large networks for anomaly detection.
Findings
Outperforms state-of-the-art methods on seven benchmark datasets.
Effectively captures local structure and high-dimensional attributes.
Scalable to large attributed networks.
Abstract
Anomaly detection on attributed networks attracts considerable research interests due to wide applications of attributed networks in modeling a wide range of complex systems. Recently, the deep learning-based anomaly detection methods have shown promising results over shallow approaches, especially on networks with high-dimensional attributes and complex structures. However, existing approaches, which employ graph autoencoder as their backbone, do not fully exploit the rich information of the network, resulting in suboptimal performance. Furthermore, these methods do not directly target anomaly detection in their learning objective and fail to scale to large networks due to the full graph training mechanism. To overcome these limitations, in this paper, we present a novel contrastive self-supervised learning framework for anomaly detection on attributed networks. Our framework fully…
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Taxonomy
MethodsGraph Neural Network · Contrastive Learning · Solana Customer Service Number +1-833-534-1729
