PhyGCN: Pre-trained Hypergraph Convolutional Neural Networks with Self-supervised Learning.
Yihe DengRuochi ZhangPan XuJian MaQuanquan GuPublished in: bioRxiv : the preprint server for biology (2023)
Hypergraphs are powerful tools for modeling complex interactions across various domains, including biomedicine. However, learning meaningful node representations from hypergraphs remains a challenge. Existing supervised methods often lack generalizability, thereby limiting their real-world applications. We propose a new method, Pre-trained Hypergraph Convolutional Neural Networks with Self-supervised Learning (PhyGCN), which leverages hypergraph structure for self-supervision to enhance node representations. PhyGCN introduces a unique training strategy that integrates variable hyperedge sizes with self-supervised learning, enabling improved generalization to unseen data. Applications on multi-way chromatin interactions and polypharmacy side-effects demonstrate the effectiveness of PhyGCN. As a generic framework for high-order interaction datasets with abundant unlabeled data, PhyGCN holds strong potential for enhancing hypergraph node representations across various domains.
Keyphrases
- convolutional neural network
- machine learning
- deep learning
- working memory
- lymph node
- big data
- electronic health record
- randomized controlled trial
- resistance training
- gene expression
- transcription factor
- dna damage
- oxidative stress
- emergency department
- genome wide
- body composition
- human health
- climate change
- high intensity
- adverse drug