ResGCN: Attention-Based Deep Residual Modeling for Anomaly Detection on Attributed Networks

Abstract

Effectively detecting anomalous nodes in attributed networks is crucial for the success of many real-world applications such as fraud and intrusion detection. Existing approaches have difficulties with three major issues: sparsity and nonlinearity capturing, residual modeling, and network smoothing. We propose Residual Graph Convolutional Network (ResGCN), an attention-based deep residual modeling approach that can tackle these issues: modeling the attributed networks with GCN allows to capture the sparsity and nonlinearity, utilizing a deep neural network allows direct residual ing from the input, and a residual-based attention mechanism reduces the adverse effect from anomalous nodes and prevents over-smoothing. Extensive experiments on several real-world attributed networks demonstrate the effectiveness of ResGCN in detecting anomalies.

Cite

Text

Pei et al. "ResGCN: Attention-Based Deep Residual Modeling for Anomaly Detection on Attributed Networks." Machine Learning, 2022. doi:10.1007/S10994-021-06044-0

Markdown

[Pei et al. "ResGCN: Attention-Based Deep Residual Modeling for Anomaly Detection on Attributed Networks." Machine Learning, 2022.](https://mlanthology.org/mlj/2022/pei2022mlj-resgcn/) doi:10.1007/S10994-021-06044-0

BibTeX

@article{pei2022mlj-resgcn,
  title     = {{ResGCN: Attention-Based Deep Residual Modeling for Anomaly Detection on Attributed Networks}},
  author    = {Pei, Yulong and Huang, Tianjin and van Ipenburg, Werner and Pechenizkiy, Mykola},
  journal   = {Machine Learning},
  year      = {2022},
  pages     = {519-541},
  doi       = {10.1007/S10994-021-06044-0},
  volume    = {111},
  url       = {https://mlanthology.org/mlj/2022/pei2022mlj-resgcn/}
}