In this work we develop and examine two novel first-order splitting algorithms for solving large-scale composite optimization problems in infinite-dimensional spaces. Such problems are ubiquitous in many areas of science and engineering, particularly in data science and imaging sciences. Our work is focused on relaxing the Lipschitz-smoothness assumptions generally required by first-order splitting algorithms by replacing the Euclidean energy with a Bregman divergence. These developments allow one to solve problems having more exotic geometry than that of the usual Euclidean setting. One algorithm is hybridization of the conditional gradient algorithm, making use of a linear minimization oracle at each iteration, with an augmented Lagrangia...
International audienceA new stochastic primal-dual algorithm for solving a composite optimization pr...
A new stochastic primal-dual algorithm for solving a composite optimization problem is proposed. It ...
This thesis mainly studies optimization algorithms. Programming problems arising in signal processin...
In this work we develop and examine two novel first-order splitting algorithms for solving large-sca...
In this work we develop and examine two novel first-order splitting algorithms for solving large-sca...
In this work we develop and examine two novel first-order splitting algorithms for solving large-sca...
Dans ce travail, nous développons et examinons deux nouveaux algorithmes d'éclatement du premier ord...
International audienceWe study a stochastic first order primal-dual method for solving convex-concav...
International audienceWe study a stochastic first order primal-dual method for solving convex-concav...
International audienceWe study a stochastic first order primal-dual method for solving convex-concav...
This manuscript is concerned with convergence analysis of first-order operator splitting methods tha...
This manuscript is concerned with convergence analysis of first-order operator splitting methods tha...
This manuscript is concerned with convergence analysis of first-order operator splitting methods tha...
This manuscript is concerned with convergence analysis of first-order operator splitting methods tha...
In this work we propose a stochastic primal-dual preconditioned three-operator splitting algorithm f...
International audienceA new stochastic primal-dual algorithm for solving a composite optimization pr...
A new stochastic primal-dual algorithm for solving a composite optimization problem is proposed. It ...
This thesis mainly studies optimization algorithms. Programming problems arising in signal processin...
In this work we develop and examine two novel first-order splitting algorithms for solving large-sca...
In this work we develop and examine two novel first-order splitting algorithms for solving large-sca...
In this work we develop and examine two novel first-order splitting algorithms for solving large-sca...
Dans ce travail, nous développons et examinons deux nouveaux algorithmes d'éclatement du premier ord...
International audienceWe study a stochastic first order primal-dual method for solving convex-concav...
International audienceWe study a stochastic first order primal-dual method for solving convex-concav...
International audienceWe study a stochastic first order primal-dual method for solving convex-concav...
This manuscript is concerned with convergence analysis of first-order operator splitting methods tha...
This manuscript is concerned with convergence analysis of first-order operator splitting methods tha...
This manuscript is concerned with convergence analysis of first-order operator splitting methods tha...
This manuscript is concerned with convergence analysis of first-order operator splitting methods tha...
In this work we propose a stochastic primal-dual preconditioned three-operator splitting algorithm f...
International audienceA new stochastic primal-dual algorithm for solving a composite optimization pr...
A new stochastic primal-dual algorithm for solving a composite optimization problem is proposed. It ...
This thesis mainly studies optimization algorithms. Programming problems arising in signal processin...