BayesCOOP

Description: 

BayesCOOP is a scalable Bayesian framework for supervised multimodal data integration. It combines the Bayesian bootstrap with a jittered group spike-and-slab Laplace prior to enable cooperative learning across heterogeneous data modalities, with principled uncertainty quantification.

Weill Cornell Medicine Mallick Lab 402 E 67th Street New York, NY 10065 Phone: (646) 962-4919