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Robust Learning on Noisy Graphs via Latent Space Constraints with External Knowledge

7 July 2025
Chunhui Gu
Mohammad Sadegh Nasr
James P. Long
Kim-Anh Do
Ehsan Irajizad
    NoLa
ArXiv (abs)PDFHTML
Main:8 Pages
3 Figures
Bibliography:3 Pages
2 Tables
Appendix:10 Pages
Abstract

Graph Neural Networks (GNNs) often struggle with noisy edges. We propose Latent Space Constrained Graph Neural Networks (LSC-GNN) to incorporate external "clean" links and guide embeddings of a noisy target graph. We train two encoders--one on the full graph (target plus external edges) and another on a regularization graph excluding the target's potentially noisy links--then penalize discrepancies between their latent representations. This constraint steers the model away from overfitting spurious edges. Experiments on benchmark datasets show LSC-GNN outperforms standard and noise-resilient GNNs in graphs subjected to moderate noise. We extend LSC-GNN to heterogeneous graphs and validate it on a small protein-metabolite network, where metabolite-protein interactions reduce noise in protein co-occurrence data. Our results highlight LSC-GNN's potential to boost predictive performance and interpretability in settings with noisy relational structures.

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