Tag
This paper proposes CMF-ELN, a cross-modal fusion end-to-end learning network for cold-start drug-drug interaction prediction, using multi-modal knowledge graphs and a four-channel graph autoencoder to improve similarity modeling and interpretability.
Introduces CGM-JEPA, a self-supervised pretraining framework for continuous glucose monitor data that improves cross-modal and cross-cohort performance through masked latent prediction and distributional objectives.