International audience<p>We propose a new randomized coordinate descent method for minimizing the sum of convex functions each of which depends on a small number of coordinates only. Our method (APPROX) is simultaneously Accelerated, Parallel and PROXimal; this is the first time such a method is proposed. In the special case when the number of processors is equal to the number of coordinates, the method converges at the rate $2\bar{\omega}\bar{L} R^2/(k+1)^2 $, where $k$ is the iteration counter, $\bar{\omega}$ is a data-weighted \emph{average} degree of separability of the loss function, $\bar{L}$ is the \emph{average} of Lipschitz constants associated with the coordinates and individual functions in the sum, and $R$ is the distance of t...
Submodular function minimization is a fundamental optimization problem that arises in several applic...
International audienceWe analyze alternating descent algorithms for minimizing the sum of a quadrati...
We develop an accelerated randomized proximal coordinate gradient (APCG) method, for solving a broad...
We propose a new stochastic coordinate descent method for minimizing the sum of convex functions eac...
In this work we show that randomized (block) coordinate descent methods can be accelerated by parall...
We study the problem of minimizing the sum of a smooth convex function and a convex block-separable ...
Abstract We propose and analyze a new parallel coordinate descent method-'NSyncin which at each...
We study the performance of a family of randomized parallel coordinate descent methods for minimizin...
39 pages, 1 algorithm, 3 figures, 2 tablesInternational audienceWe study the performance of a family...
In this paper we develop random block coordinate descent methods for minimizing large-scale linearl...
Abstract Coordinate descent algorithms solve optimization problems by suc-cessively performing appro...
We consider the problem of minimizing the sum of two convex functions: one is smooth and given by a ...
Abstract. In this paper we present a novel randomized block coordinate descent method for the minimi...
We propose and analyze a new parallel coordinate descent method—‘NSync— in which at each iteration a...
In this work we propose a distributed randomized block coordinate descent method for mini-mizing a c...
Submodular function minimization is a fundamental optimization problem that arises in several applic...
International audienceWe analyze alternating descent algorithms for minimizing the sum of a quadrati...
We develop an accelerated randomized proximal coordinate gradient (APCG) method, for solving a broad...
We propose a new stochastic coordinate descent method for minimizing the sum of convex functions eac...
In this work we show that randomized (block) coordinate descent methods can be accelerated by parall...
We study the problem of minimizing the sum of a smooth convex function and a convex block-separable ...
Abstract We propose and analyze a new parallel coordinate descent method-'NSyncin which at each...
We study the performance of a family of randomized parallel coordinate descent methods for minimizin...
39 pages, 1 algorithm, 3 figures, 2 tablesInternational audienceWe study the performance of a family...
In this paper we develop random block coordinate descent methods for minimizing large-scale linearl...
Abstract Coordinate descent algorithms solve optimization problems by suc-cessively performing appro...
We consider the problem of minimizing the sum of two convex functions: one is smooth and given by a ...
Abstract. In this paper we present a novel randomized block coordinate descent method for the minimi...
We propose and analyze a new parallel coordinate descent method—‘NSync— in which at each iteration a...
In this work we propose a distributed randomized block coordinate descent method for mini-mizing a c...
Submodular function minimization is a fundamental optimization problem that arises in several applic...
International audienceWe analyze alternating descent algorithms for minimizing the sum of a quadrati...
We develop an accelerated randomized proximal coordinate gradient (APCG) method, for solving a broad...