Robust Graph Condensation via Classification Complexity Mitigation
Abstract
Graph condensation (GC) has gained significant attention for its ability to synthesize smaller yet informative graphs. However, existing studies often overlook the robustness of GC in scenarios where the original graph is corrupted. In such cases, we observe that the performance of GC deteriorates significantly, while existing robust graph learning technologies offer only limited effectiveness. Through both empirical investigation and theoretical analysis, we reveal that GC is inherently an intrinsic-dimension-reducing process, synthesizing a condensed graph with lower classification complexity. Although this property is critical for effective GC performance, it remains highly vulnerable to adversarial perturbations. To tackle this vulnerability and improve GC robustness, we adopt the geometry perspective of graph data manifold and propose a novel **M**anifold-constrained **R**obust **G**raph **C**ondensation framework named **MRGC**. Specifically, we introduce three graph data manifold learning modules that guide the condensed graph to lie within a smooth, low-dimensional manifold with minimal class ambiguity, thereby preserving the classification complexity reduction capability of GC and ensuring robust performance under universal adversarial attacks. Extensive experiments demonstrate the robustness of MRGC across diverse attack scenarios.
Cite
Text
Luo et al. "Robust Graph Condensation via Classification Complexity Mitigation." Advances in Neural Information Processing Systems, 2025.Markdown
[Luo et al. "Robust Graph Condensation via Classification Complexity Mitigation." Advances in Neural Information Processing Systems, 2025.](https://mlanthology.org/neurips/2025/luo2025neurips-robust/)BibTeX
@inproceedings{luo2025neurips-robust,
title = {{Robust Graph Condensation via Classification Complexity Mitigation}},
author = {Luo, Jiayi and Sun, Qingyun and Yang, Beining and Yuan, Haonan and Fu, Xingcheng and Ma, Yanbiao and Li, Jianxin and Yu, Philip S.},
booktitle = {Advances in Neural Information Processing Systems},
year = {2025},
url = {https://mlanthology.org/neurips/2025/luo2025neurips-robust/}
}