An efficient, function-space-based second-order method for the $H^1$-projection onto the Gibbs-simplex is presented. The method makes use of the theory of semismooth Newton methods in function spaces as well as Moreau-Yosida regularization and techniques from parametric optimization. A path-following technique is considered for the regularization parameter updates. A rigorous first and second-order sensitivity analysis of the value function for the regularized problem is provided to justify the update scheme. The viability of the algorithm is then demonstrated for two applications found in the literature: binary image inpainting and labeled data classification. In both cases, the algorithm exhibits mesh-independent behavior
Numerical optimization and machine learning have had a fruitful relationship, from the perspective o...
We present a new inexact nonsmooth Newton method for the solution of convex minimization problems wi...
We propose a novel trust region method for solving a class of nonsmooth, nonconvex composite-type op...
An efficient, function-space-based second-order method for the H1-projection onto the Gibbs-simplex ...
An efficient, function-space-based second-order method for the H1-projection onto the Gibbs simplex ...
An efficient, function-space-based second-order method for the $H^1$-projection onto the Gibbs simpl...
Path-following splitting and semismooth Newton methods for solv- ing a class of problems related to...
We are concerned with the globalization of a semismooth Newton method for l1-Tikhonov regularization...
2013-2014 > Academic research: refereed > Publication in refereed journalVersion of RecordPublishe
We consider the problem of finding the best approximation point from a polyhedral set, and its appli...
International audienceThis paper studies Newton-type methods for minimization of partly smooth conve...
We present a multigrid method for the minimization of strongly convex functionals defined on a finit...
In the paper, a Newton-type method for the solution of generalized equations (GEs) is derived, where...
In this paper, we study the regularized second-order methods for unconstrained minimization of a twi...
AbstractA bound on the possible deterioration in the condition number of the inverse Hessian approxi...
Numerical optimization and machine learning have had a fruitful relationship, from the perspective o...
We present a new inexact nonsmooth Newton method for the solution of convex minimization problems wi...
We propose a novel trust region method for solving a class of nonsmooth, nonconvex composite-type op...
An efficient, function-space-based second-order method for the H1-projection onto the Gibbs-simplex ...
An efficient, function-space-based second-order method for the H1-projection onto the Gibbs simplex ...
An efficient, function-space-based second-order method for the $H^1$-projection onto the Gibbs simpl...
Path-following splitting and semismooth Newton methods for solv- ing a class of problems related to...
We are concerned with the globalization of a semismooth Newton method for l1-Tikhonov regularization...
2013-2014 > Academic research: refereed > Publication in refereed journalVersion of RecordPublishe
We consider the problem of finding the best approximation point from a polyhedral set, and its appli...
International audienceThis paper studies Newton-type methods for minimization of partly smooth conve...
We present a multigrid method for the minimization of strongly convex functionals defined on a finit...
In the paper, a Newton-type method for the solution of generalized equations (GEs) is derived, where...
In this paper, we study the regularized second-order methods for unconstrained minimization of a twi...
AbstractA bound on the possible deterioration in the condition number of the inverse Hessian approxi...
Numerical optimization and machine learning have had a fruitful relationship, from the perspective o...
We present a new inexact nonsmooth Newton method for the solution of convex minimization problems wi...
We propose a novel trust region method for solving a class of nonsmooth, nonconvex composite-type op...