International audienceLinear programming relaxations are central to MAP inference in discrete Markov Random Fields. The ability to properly solve the Lagrangian dual is a critical component of such methods. In this paper, we study the benefit of using Newton-type methods to solve the Lagrangian dual of a smooth version of the problem. We investigate their ability to achieve superior convergence behavior and to better handle the ill-conditioned nature of the formulation, as compared to first order methods. We show that it is indeed possible to efficiently apply a trust region Newton method for a broad range of MAP inference problems. In this paper we propose a provably convergent and efficient framework that includes (i) excellent compromise...
Les relaxations en problème d’optimisation linéaire jouent un rôle central en inférence du maximum a...
International audienceIn this paper, we study a nonconvex continuous relaxation of MAP inference in ...
International audienceIn this paper, we study a nonconvex continuous relaxation of MAP inference in ...
International audienceLinear programming relaxations are central to MAP inference in discrete Markov...
International audienceLinear programming relaxations are central to MAP inference in discrete Markov...
International audienceLinear programming relaxations are central to MAP inference in discrete Markov...
International audienceLinear programming relaxations are central to MAP inference in discrete Markov...
International audienceLinear programming relaxations are central to MAP inference in discrete Markov...
International audienceLinear programming relaxations are central to MAP inference in discrete Markov...
International audienceLinear programming relaxations are central to MAP inference in discrete Markov...
Numerical optimization and machine learning have had a fruitful relationship, from the perspective o...
Numerical optimization and machine learning have had a fruitful relationship, from the perspective o...
Numerical optimization and machine learning have had a fruitful relationship, from the perspective o...
Numerical optimization and machine learning have had a fruitful relationship, from the perspective o...
Les relaxations en problème d’optimisation linéaire jouent un rôle central en inférence du maximum a...
Les relaxations en problème d’optimisation linéaire jouent un rôle central en inférence du maximum a...
International audienceIn this paper, we study a nonconvex continuous relaxation of MAP inference in ...
International audienceIn this paper, we study a nonconvex continuous relaxation of MAP inference in ...
International audienceLinear programming relaxations are central to MAP inference in discrete Markov...
International audienceLinear programming relaxations are central to MAP inference in discrete Markov...
International audienceLinear programming relaxations are central to MAP inference in discrete Markov...
International audienceLinear programming relaxations are central to MAP inference in discrete Markov...
International audienceLinear programming relaxations are central to MAP inference in discrete Markov...
International audienceLinear programming relaxations are central to MAP inference in discrete Markov...
International audienceLinear programming relaxations are central to MAP inference in discrete Markov...
Numerical optimization and machine learning have had a fruitful relationship, from the perspective o...
Numerical optimization and machine learning have had a fruitful relationship, from the perspective o...
Numerical optimization and machine learning have had a fruitful relationship, from the perspective o...
Numerical optimization and machine learning have had a fruitful relationship, from the perspective o...
Les relaxations en problème d’optimisation linéaire jouent un rôle central en inférence du maximum a...
Les relaxations en problème d’optimisation linéaire jouent un rôle central en inférence du maximum a...
International audienceIn this paper, we study a nonconvex continuous relaxation of MAP inference in ...
International audienceIn this paper, we study a nonconvex continuous relaxation of MAP inference in ...