Recovery of Sparse Probability Measures via Convex Programming
Pilanci, Mert, Ghaoui, Laurent E., Chandrasekaran, Venkat
–Neural Information Processing Systems
We consider the problem of cardinality penalized optimization of a convex function over the probability simplex with additional convex constraints. It's well-known that the classical L1 regularizer fails to promote sparsity on the probability simplex since L1 norm on the probability simplex is trivially constant. We propose a direct relaxation of the minimum cardinality problem and show that it can be efficiently solved using convex programming. As a first application we consider recovering a sparse probability measure given moment constraints, in which our formulation becomes linear programming, hence can be solved very efficiently. A sufficient condition for exact recovery of the minimum cardinality solution is derived for arbitrary affine constraints. We then develop a penalized version for the noisy setting which can be solved using second order cone programs. The proposed method outperforms known heuristics based on L1 norm. As a second application we consider convex clustering using a sparse Gaussian mixture and compare our results with the well known soft k-means algorithm.
Neural Information Processing Systems
Dec-31-2012
- Country:
- North America > United States > California > Alameda County > Berkeley (0.14)
- Genre:
- Research Report (0.48)
- Technology: