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Cheeger--Hodge Contrastive Learning for Structurally Robust Graph Representation Learning

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Graph Contrastive Learning (GCL) has emerged as a prominent framework for unsupervised graph representation learning. However, relying on augmentation design alone to define the invariances learned by GCL can be brittle under structural perturbations. To address this issue, we propose Cheeger--Hodge Contrastive Learning (CHCL), a framework that aligns a perturbation-stable Cheeger--Hodge joint signature across augmented views for robust graph representation learning. The proposed signature combines a Cheeger-inspired connectivity signature derived from the algebraic connectivity \(\lambda_2\) with the low-frequency spectrum of the 1-Hodge Laplacian, thereby capturing both global connectivity and higher-order structural information. By aligning encoder representations with the proposed Cheeger--Hodge joint signature across augmented views, CHCL learns graph embeddings that are robust to local structural perturbations. Extensive experiments on standard benchmarks, transfer settings demonstrate that CHCL consistently improves performance, robustness, and generalization.

Mengyang Zhao, Longlong Li, Cunquan Qu• 2026

Related benchmarks

TaskDatasetResultRank
Graph ClassificationPROTEINS
Accuracy79.06
1252
Graph ClassificationMUTAG
Accuracy93.02
1103
Graph ClassificationIMDB-M
Accuracy53.2
425
Graph ClassificationDD
Accuracy80.92
300
Graph ClassificationPTC-MR
Accuracy68.18
244
Graph ClassificationBZR
Accuracy89.19
165
Graph ClassificationCOX2
Accuracy84.2
161
Graph ClassificationIMDB-B
Mean Accuracy75.62
159
Graph ClassificationREDDIT-B
Accuracy92.49
145
Molecular property predictionBACE
ROC-AUC85.43
73
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