This article introduces a new Penalized Majorization-Minimization Subspace algorithm (P-MMS) for solving smooth, constrained optimization problems. In short, our approach consists of embedding a subspace algorithm in an inexact exterior penalty procedure. The subspace strategy, combined with a Majoration-Minimization step-size search, takes great advantage of the smoothness of the penalized cost function, while the penalty method allows to handle a wide range of constraints. The main drawback of exterior penalty approaches, namely ill-conditioning for large values of the penalty parameter, is overcome by using a trust-regionlike technique. The convergence of the resulting algorithm is analyzed. Numerical experiments carried out on two large...
International audienceMany data science problems can be efficiently addressed by minimizing a cost f...
International audienceMany data science problems can be efficiently addressed by minimizing a cost f...
International audienceThis paper proposes accelerated subspace optimization methods in the context o...
This article introduces a new Penalized Majorization-Minimization Subspace algorithm (P-MMS) for sol...
This article introduces a new Penalized Majorization-Minimization Subspace algorithm (P-MMS) for sol...
This article introduces a new Penalized Majorization-Minimization Subspace algorithm (P-MMS) for sol...
International audienceThis article introduces a new Penalized Majorization-Minimization Subspace alg...
International audienceThis article introduces a new Penalized Majorization-Minimization Subspace alg...
International audienceThis article introduces a new Penalized Majorization-Minimization Subspace alg...
International audienceThis article introduces a new Penalized Majorization-Minimization Subspace alg...
International audienceThis article introduces a new Penalized Majorization-Minimization Subspace alg...
International audienceMany data science problems can be efficiently addressed by minimizing a cost f...
International audienceMany data science problems can be efficiently addressed by minimizing a cost f...
International audienceMany data science problems can be efficiently addressed by minimizing a cost f...
International audienceMany data science problems can be efficiently addressed by minimizing a cost f...
International audienceMany data science problems can be efficiently addressed by minimizing a cost f...
International audienceMany data science problems can be efficiently addressed by minimizing a cost f...
International audienceThis paper proposes accelerated subspace optimization methods in the context o...
This article introduces a new Penalized Majorization-Minimization Subspace algorithm (P-MMS) for sol...
This article introduces a new Penalized Majorization-Minimization Subspace algorithm (P-MMS) for sol...
This article introduces a new Penalized Majorization-Minimization Subspace algorithm (P-MMS) for sol...
International audienceThis article introduces a new Penalized Majorization-Minimization Subspace alg...
International audienceThis article introduces a new Penalized Majorization-Minimization Subspace alg...
International audienceThis article introduces a new Penalized Majorization-Minimization Subspace alg...
International audienceThis article introduces a new Penalized Majorization-Minimization Subspace alg...
International audienceThis article introduces a new Penalized Majorization-Minimization Subspace alg...
International audienceMany data science problems can be efficiently addressed by minimizing a cost f...
International audienceMany data science problems can be efficiently addressed by minimizing a cost f...
International audienceMany data science problems can be efficiently addressed by minimizing a cost f...
International audienceMany data science problems can be efficiently addressed by minimizing a cost f...
International audienceMany data science problems can be efficiently addressed by minimizing a cost f...
International audienceMany data science problems can be efficiently addressed by minimizing a cost f...
International audienceThis paper proposes accelerated subspace optimization methods in the context o...