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Main Authors: Xu, Fan, Wang, Nan, Wu, Hao, Wen, Xuezhi, Zhang, Dalin, Lu, Siyang, Li, Binyong, Gong, Wei, Wan, Hai, Zhao, Xibin
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2406.00734
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author Xu, Fan
Wang, Nan
Wu, Hao
Wen, Xuezhi
Zhang, Dalin
Lu, Siyang
Li, Binyong
Gong, Wei
Wan, Hai
Zhao, Xibin
author_facet Xu, Fan
Wang, Nan
Wu, Hao
Wen, Xuezhi
Zhang, Dalin
Lu, Siyang
Li, Binyong
Gong, Wei
Wan, Hai
Zhao, Xibin
contents Graph-Level Anomaly Detection (GLAD) aims to distinguish anomalous graphs within a graph dataset. However, current methods are constrained by their receptive fields, struggling to learn global features within the graphs. Moreover, most contemporary methods are based on spatial domain and lack exploration of spectral characteristics. In this paper, we propose a multi-perspective hybrid graph-level anomaly detector namely GLADformer, consisting of two key modules. Specifically, we first design a Graph Transformer module with global spectrum enhancement, which ensures balanced and resilient parameter distributions by fusing global features and spectral distribution characteristics. Furthermore, to uncover local anomalous attributes, we customize a band-pass spectral GNN message passing module that further enhances the model's generalization capability. Through comprehensive experiments on ten real-world datasets from multiple domains, we validate the effectiveness and robustness of GLADformer. This demonstrates that GLADformer outperforms current state-of-the-art models in graph-level anomaly detection, particularly in effectively capturing global anomaly representations and spectral characteristics.
format Preprint
id arxiv_https___arxiv_org_abs_2406_00734
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle GLADformer: A Mixed Perspective for Graph-level Anomaly Detection
Xu, Fan
Wang, Nan
Wu, Hao
Wen, Xuezhi
Zhang, Dalin
Lu, Siyang
Li, Binyong
Gong, Wei
Wan, Hai
Zhao, Xibin
Machine Learning
Graph-Level Anomaly Detection (GLAD) aims to distinguish anomalous graphs within a graph dataset. However, current methods are constrained by their receptive fields, struggling to learn global features within the graphs. Moreover, most contemporary methods are based on spatial domain and lack exploration of spectral characteristics. In this paper, we propose a multi-perspective hybrid graph-level anomaly detector namely GLADformer, consisting of two key modules. Specifically, we first design a Graph Transformer module with global spectrum enhancement, which ensures balanced and resilient parameter distributions by fusing global features and spectral distribution characteristics. Furthermore, to uncover local anomalous attributes, we customize a band-pass spectral GNN message passing module that further enhances the model's generalization capability. Through comprehensive experiments on ten real-world datasets from multiple domains, we validate the effectiveness and robustness of GLADformer. This demonstrates that GLADformer outperforms current state-of-the-art models in graph-level anomaly detection, particularly in effectively capturing global anomaly representations and spectral characteristics.
title GLADformer: A Mixed Perspective for Graph-level Anomaly Detection
topic Machine Learning
url https://arxiv.org/abs/2406.00734