Towards Graph Foundation Models: Training on Knowledge Graphs Enables Transferability to General Graphs

Neural Information Processing Systems 

Inspired by the success of large language models, there is a trend toward developing graph foundation models to conduct diverse downstream tasks in various domains. However, current models often require extra fine-tuning to apply their learned structural and semantic representations to new graphs, which limits their versatility.