From MAP to Marginals: Variational Inference in Bayesian Submodular Models

Neural Information Processing Systems 

Submodular optimization has found many applications in machine learning and beyond. We carry out the first systematic investigation of inference in probabilistic models defined through submodular functions, generalizing regular pairwise MRFs and Determinantal Point Processes.