Motif-Consistent Counterfactuals with Adversarial Refinement for Graph-Level Anomaly Detection
Chunjing Xiao, Shikang Pang, Wenxin Tai, Yanlong Huang, Goce, Trajcevski, Fan Zhou

TL;DR
This paper introduces MotifCAR, a novel graph-level anomaly detection method that generates realistic counterfactual graphs using adversarial refinement to improve detection accuracy.
Contribution
It proposes a motif-consistent counterfactual generation framework with adversarial refinement, addressing limitations of existing perturbation-based methods for more effective anomaly detection.
Findings
MotifCAR outperforms existing methods in anomaly detection accuracy.
The GAN-based optimizer produces high-quality, realistic counterfactual graphs.
Motif consistency enhances the validity of generated counterfactuals.
Abstract
Graph-level anomaly detection is significant in diverse domains. To improve detection performance, counterfactual graphs have been exploited to benefit the generalization capacity by learning causal relations. Most existing studies directly introduce perturbations (e.g., flipping edges) to generate counterfactual graphs, which are prone to alter the semantics of generated examples and make them off the data manifold, resulting in sub-optimal performance. To address these issues, we propose a novel approach, Motif-consistent Counterfactuals with Adversarial Refinement (MotifCAR), for graph-level anomaly detection. The model combines the motif of one graph, the core subgraph containing the identification (category) information, and the contextual subgraph (non-motif) of another graph to produce a raw counterfactual graph. However, the produced raw graph might be distorted and cannot…
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Taxonomy
MethodsCounterfactuals Explanations
