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Auteurs principaux: Jin, Di, Cao, Jingyi, Wang, Xiaobao, Feng, Bingdao, He, Dongxiao, Wang, Longbiao, Dang, Jianwu
Format: Preprint
Publié: 2025
Sujets:
Accès en ligne:https://arxiv.org/abs/2505.18002
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author Jin, Di
Cao, Jingyi
Wang, Xiaobao
Feng, Bingdao
He, Dongxiao
Wang, Longbiao
Dang, Jianwu
author_facet Jin, Di
Cao, Jingyi
Wang, Xiaobao
Feng, Bingdao
He, Dongxiao
Wang, Longbiao
Dang, Jianwu
contents Graph anomaly detection aims to identify unusual patterns in graph-based data, with wide applications in fields such as web security and financial fraud detection. Existing methods typically rely on contrastive learning, assuming that a lower similarity between a node and its local subgraph indicates abnormality. However, these approaches overlook a crucial limitation: the presence of interfering edges invalidates this assumption, since it introduces disruptive noise that compromises the contrastive learning process. Consequently, this limitation impairs the ability to effectively learn meaningful representations of normal patterns, leading to suboptimal detection performance. To address this issue, we propose a Clean-View Enhanced Graph Anomaly Detection framework (CVGAD), which includes a multi-scale anomaly awareness module to identify key sources of interference in the contrastive learning process. Moreover, to mitigate bias from the one-step edge removal process, we introduce a novel progressive purification module. This module incrementally refines the graph by iteratively identifying and removing interfering edges, thereby enhancing model performance. Extensive experiments on five benchmark datasets validate the effectiveness of our approach.
format Preprint
id arxiv_https___arxiv_org_abs_2505_18002
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Rethinking Contrastive Learning in Graph Anomaly Detection: A Clean-View Perspective
Jin, Di
Cao, Jingyi
Wang, Xiaobao
Feng, Bingdao
He, Dongxiao
Wang, Longbiao
Dang, Jianwu
Machine Learning
Graph anomaly detection aims to identify unusual patterns in graph-based data, with wide applications in fields such as web security and financial fraud detection. Existing methods typically rely on contrastive learning, assuming that a lower similarity between a node and its local subgraph indicates abnormality. However, these approaches overlook a crucial limitation: the presence of interfering edges invalidates this assumption, since it introduces disruptive noise that compromises the contrastive learning process. Consequently, this limitation impairs the ability to effectively learn meaningful representations of normal patterns, leading to suboptimal detection performance. To address this issue, we propose a Clean-View Enhanced Graph Anomaly Detection framework (CVGAD), which includes a multi-scale anomaly awareness module to identify key sources of interference in the contrastive learning process. Moreover, to mitigate bias from the one-step edge removal process, we introduce a novel progressive purification module. This module incrementally refines the graph by iteratively identifying and removing interfering edges, thereby enhancing model performance. Extensive experiments on five benchmark datasets validate the effectiveness of our approach.
title Rethinking Contrastive Learning in Graph Anomaly Detection: A Clean-View Perspective
topic Machine Learning
url https://arxiv.org/abs/2505.18002