International audienceIn this article, we introduce a new proximal interior point algorithm (PIPA). This algorithm is able to handle convex optimization problems involving various constraints where the objective function is the sum of a Lipschitz differentiable term and a possibly nons-mooth one. Each iteration of PIPA involves the minimization of a merit function evaluated for decaying values of a logarithmic barrier parameter. This inner minimization is performed thanks to a finite number of subiterations of a variable metric forward-backward method employing a line search strategy. The convergence of this latter step as well as the convergence the global method itself are analyzed. The numerical efficiency of the proposed approach is dem...
We consider a variable metric linesearch based proximal gradient method for the minimization of the ...
In this work, we propose an inexact interior proximal-type algorithm for solving convex second-order...
We present an inexact interior point proximal method to solve linearly constrained convex problems....
International audienceIn this article, we introduce a new proximal interior point algorithm (PIPA). ...
International audienceIn this article, we introduce a new proximal interior point algorithm (PIPA). ...
International audienceIn this article, we introduce a new proximal interior point algorithm (PIPA). ...
International audienceInterior point methods have been known for decades to be useful for the resolu...
International audienceInterior point methods have been known for decades to be useful for the resolu...
International audienceInterior point methods have been known for decades to be useful for the resolu...
International audienceInterior point methods have been known for decades to be useful for the resolu...
International audienceInterior point methods have been known for decades to be useful for the resolu...
International audienceInterior point methods have been known for decades to be useful for the resolu...
International audienceInterior point methods have been known for decades to be useful for the resolu...
This paper demonstrates a customized application of the classical proximal point algorithm (PPA) to ...
This article describes the current state of the art of interior-point methods (IPMs) for convex, con...
We consider a variable metric linesearch based proximal gradient method for the minimization of the ...
In this work, we propose an inexact interior proximal-type algorithm for solving convex second-order...
We present an inexact interior point proximal method to solve linearly constrained convex problems....
International audienceIn this article, we introduce a new proximal interior point algorithm (PIPA). ...
International audienceIn this article, we introduce a new proximal interior point algorithm (PIPA). ...
International audienceIn this article, we introduce a new proximal interior point algorithm (PIPA). ...
International audienceInterior point methods have been known for decades to be useful for the resolu...
International audienceInterior point methods have been known for decades to be useful for the resolu...
International audienceInterior point methods have been known for decades to be useful for the resolu...
International audienceInterior point methods have been known for decades to be useful for the resolu...
International audienceInterior point methods have been known for decades to be useful for the resolu...
International audienceInterior point methods have been known for decades to be useful for the resolu...
International audienceInterior point methods have been known for decades to be useful for the resolu...
This paper demonstrates a customized application of the classical proximal point algorithm (PPA) to ...
This article describes the current state of the art of interior-point methods (IPMs) for convex, con...
We consider a variable metric linesearch based proximal gradient method for the minimization of the ...
In this work, we propose an inexact interior proximal-type algorithm for solving convex second-order...
We present an inexact interior point proximal method to solve linearly constrained convex problems....