Topologically-Stabilized Graph Neural Networks: Empirical Robustness Across Domains
About
Graph Neural Networks (GNNs) have become the standard for graph representation learning but remain vulnerable to structural perturbations. We propose a novel framework that integrates persistent homology features with stability regularization to enhance robustness. Building on the stability theorems of persistent homology \cite{cohen2007stability}, our method combines GIN architectures with multi-scale topological features extracted from persistence images, enforced by Hiraoka-Kusano-inspired stability constraints. Across six diverse datasets spanning biochemical, social, and collaboration networks , our approach demonstrates exceptional robustness to edge perturbations while maintaining competitive accuracy. Notably, we observe minimal performance degradation (0-4\% on most datasets) under perturbation, significantly outperforming baseline stability. Our work provides both a theoretically-grounded and empirically-validated approach to robust graph learning that aligns with recent advances in topological regularization
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Graph Classification | Mutag (test) | -- | 217 | |
| Graph Classification | PROTEINS (test) | -- | 180 | |
| Graph Classification | COLLAB (test) | -- | 96 | |
| Graph Classification | ENZYMES (test) | -- | 77 | |
| Graph Classification | REDDIT-BINARY (test) | Accuracy (Clean)89 | 6 |