Back to Search
Start Over
Augmentations in Hypergraph Contrastive Learning: Fabricated and Generative
- Source :
- Adv Neural Inf Process Syst
- Publication Year :
- 2022
-
Abstract
- This paper targets at improving the generalizability of hypergraph neural networks in the low-label regime, through applying the contrastive learning approach from images/graphs (we refer to it as HyperGCL). We focus on the following question: How to construct contrastive views for hypergraphs via augmentations? We provide the solutions in two folds. First, guided by domain knowledge, we fabricate two schemes to augment hyperedges with higher-order relations encoded, and adopt three vertex augmentation strategies from graph-structured data. Second, in search of more effective views in a data-driven manner, we for the first time propose a hypergraph generative model to generate augmented views, and then an end-to-end differentiable pipeline to jointly learn hypergraph augmentations and model parameters. Our technical innovations are reflected in designing both fabricated and generative augmentations of hypergraphs. The experimental findings include: (i) Among fabricated augmentations in HyperGCL, augmenting hyperedges provides the most numerical gains, implying that higher-order information in structures is usually more downstream-relevant; (ii) Generative augmentations do better in preserving higher-order information to further benefit generalizability; (iii) HyperGCL also boosts robustness and fairness in hypergraph representation learning. Codes are released at https://github.com/weitianxin/HyperGCL.<br />NeurIPS 2022. Supplementary materials are available at https://weitianxin.github.io/files/neurips22_hypergcl_appendix.pdf
Details
- Language :
- English
- Database :
- OpenAIRE
- Journal :
- Adv Neural Inf Process Syst
- Accession number :
- edsair.doi.dedup.....eef4669e23d98db735b98d612967ee75