Title :
Random Coordinate Descent Methods for
Regularized Convex Optimization
Author :
Patrascu, Andrei ; Necoara, Ion
Author_Institution :
Autom. Control & Syst. Eng. Dept., Univ. Politeh. Bucharest, Bucharest, Romania
Abstract :
In this paper, we study the minimization of ℓ0 regularized optimization problems, where the objective function is composed of a smooth convex function and the ℓ0 regularization. We analyze optimality conditions for this nonconvex problem which lead to the separation of local minima into two restricted classes that are nested and around the set of global minima. Based on these restricted classes of local minima, we devise two new random coordinate descent type methods for solving these problems. In particular, we analyze the convergence properties of an iterative hard thresholding based random coordinate descent algorithm for which we prove that any limit point is a local minimum from the first restricted class of local minimizers. Then, we analyze the convergence of a random proximal alternating minimization method and show that any limit point of this algorithm is a local minima from the second restricted class of local minimizers. We also provide numerical experiments which show the superior behavior of our methods in comparison with the usual iterative hard thresholding algorithm.
Keywords :
convergence of numerical methods; convex programming; iterative methods; minimisation; ℓ0 regularized convex optimization; convergence properties; global minima; iterative hard thresholding algorithm; local minima; objective function; optimality conditions; random coordinate descent methods; random proximal alternating minimization method; smooth convex function; Local minima; Sparse regularization; local minima; packetized predictive control; random coordinate descent; sparse regularization;
Journal_Title :
Automatic Control, IEEE Transactions on
DOI :
10.1109/TAC.2015.2390551