Tight convex relaxations for sparse matrix factorization

Emile Richard, Guillaume R. Obozinski, Jean-Philippe Vert

Neural Information Processing Systems 

Based on a new atomic norm, we propose a new convex formulation for sparse matrix factorization problems in which the number of non-zero elements of the factors is assumed fixed and known. The formulation counts sparse PCA with multiple factors, subspace clustering and low-rank sparse bilinear regression as potential applications.