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.

Abstract

Graph adversarial attacks are usually produced from the two perspectives of topology/structure and node feature, both of them represent the paramount characteristics learned by today's deep learning models. Although some defense countermeasures are proposed at present, they fails to disclose the intrinsic reasons why these two aspects necessitate and how they are adequately fused to co-learn the graph representation. Towards this question, we in this paper propose an adversarial defense approach through locating the graph's critical state of adversarial resilience, resorting to the equilibrium-point theory in the discipline of complex dynamic system (CDS). In brief, our work has three novelties: i) Adversarial-Attack Modeling, i.e. map a graph regime into CDS, and use the oscillation of dynamic system to model the behavior of adversarial perturbation; ii) 2D Topology-Feature-Entangled Function Design for Perturbed Graph, i.e. project graph topology and node feature as two characteristic spaces, and define two-dimensional entangled perturbation functions to represent the dynamic variance under adversarial attacks; and iii) Location of Critical State of Adversarial Resilience, i.e. utilize the equilibrium-point theory to locate the graph's critical state of attack resilience resorting to the perturbation-reflected 2D function. Finally, multi-facet experiments on five commonly-used realistic datasets validate the effectiveness of our proposed approach, and the results show our approach can significantly outperform the state-of-the-art baselines under four representative graph adversarial attacks.