TopFeaRe: Locating Critical State of Adversarial Resilience for Graphs Regarding Topology-Feature Entanglement
arXiv cs.LG / 4/20/2026
💬 OpinionModels & Research
Key Points
- The paper studies graph adversarial attacks from both topology/structure and node-feature perspectives and argues that existing defenses do not explain why and how these aspects should be fused in learned graph representations.
- It proposes an adversarial defense method that identifies a graph’s “critical state of adversarial resilience” by mapping graph regimes to complex dynamic system (CDS) equilibrium-point theory.
- The approach models adversarial perturbations via oscillations in a dynamic system and represents topology and node features in a jointly entangled 2D function space to capture how perturbations change the graph representation.
- Experiments across five realistic graph datasets show the method can significantly outperform current state-of-the-art baselines against four representative graph adversarial attack types.
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