International audienceAs the number of samples and dimensionality of optimization problems related to statistics an machine learning explode, block coordinate descent algorithms have gained popularity since they reduce the original problem to several smaller ones. Coordinates to be optimized are usually selected randomly according to a given probability distribution. We introduce an importance sampling strategy that helps randomized coordinate descent algorithms to focus on blocks that are still far from convergence. The framework applies to problems composed of the sum of two possibly non-convex terms, one being separable and non-smooth. We have compared our algorithm to a full gradient proximal approach as well as to a randomized block co...
Abstract We consider coordinate descent (CD) methods with exact line search on convex quadratic pro...
In this paper we develop random block coordinate descent methods for minimizing large-scale linearl...
In this work we propose a distributed randomized block coordinate descent method for mini-mizing a c...
International audienceAs the number of samples and dimensionality of optimization problems related t...
We study the problem of minimizing the sum of a smooth convex function and a convex block-separable ...
Abstract. In this paper we present a novel randomized block coordinate descent method for the minimi...
In this paper we analyze the randomized block-coordinate descent (RBCD) methods proposed in [11, 15]...
Abstract We propose and analyze a new parallel coordinate descent method-'NSyncin which at each...
We propose and analyze a new parallel coordinate descent method—‘NSync— in which at each iteration a...
In this paper we propose a randomized block coordinate non-monotone gradient (RBCNMG) method for min...
Two types of low cost-per-iteration gradient descent methods have been extensively studied in par-al...
The unprecedented rate at which data is being created and stored calls for scalable optimization te...
International audience<p>We propose a new randomized coordinate descent method for minimizing the s...
In this work we show that randomized (block) coordinate descent methods can be accelerated by parall...
Abstract Accelerated coordinate descent is widely used in optimization due to its cheap per-iteratio...
Abstract We consider coordinate descent (CD) methods with exact line search on convex quadratic pro...
In this paper we develop random block coordinate descent methods for minimizing large-scale linearl...
In this work we propose a distributed randomized block coordinate descent method for mini-mizing a c...
International audienceAs the number of samples and dimensionality of optimization problems related t...
We study the problem of minimizing the sum of a smooth convex function and a convex block-separable ...
Abstract. In this paper we present a novel randomized block coordinate descent method for the minimi...
In this paper we analyze the randomized block-coordinate descent (RBCD) methods proposed in [11, 15]...
Abstract We propose and analyze a new parallel coordinate descent method-'NSyncin which at each...
We propose and analyze a new parallel coordinate descent method—‘NSync— in which at each iteration a...
In this paper we propose a randomized block coordinate non-monotone gradient (RBCNMG) method for min...
Two types of low cost-per-iteration gradient descent methods have been extensively studied in par-al...
The unprecedented rate at which data is being created and stored calls for scalable optimization te...
International audience<p>We propose a new randomized coordinate descent method for minimizing the s...
In this work we show that randomized (block) coordinate descent methods can be accelerated by parall...
Abstract Accelerated coordinate descent is widely used in optimization due to its cheap per-iteratio...
Abstract We consider coordinate descent (CD) methods with exact line search on convex quadratic pro...
In this paper we develop random block coordinate descent methods for minimizing large-scale linearl...
In this work we propose a distributed randomized block coordinate descent method for mini-mizing a c...