Beyond Alternating Updates for Matrix Factorization with Inertial Bregman Proximal Gradient Algorithms

Mukkamala, Mahesh Chandra, Ochs, Peter

Neural Information Processing Systems 

Matrix Factorization is a popular non-convex optimization problem, for which alternating minimization schemes are mostly used. They usually suffer from the major drawback that the solution is biased towards one of the optimization variables. A remedy is non-alternating schemes. However, due to a lack of Lipschitz continuity of the gradient in matrix factorization problems, convergence cannot be guaranteed. A recently developed approach relies on the concept of Bregman distances, which generalizes the standard Euclidean distance.