AbstractIn this work, we propose a proximal algorithm for unconstrained optimization on the cone of symmetric semidefinite positive matrices. It appears to be the first in the proximal class on the set of methods that convert a Symmetric Definite Positive Optimization in Nonlinear Optimization. It replaces the main iteration of the conceptual proximal point algorithm by a sequence of nonlinear programming problems on the cone of diagonal definite positive matrices that has the structure of the positive orthant of the Euclidian vector space. We are motivated by results of the classical proximal algorithm extended to Riemannian manifolds with nonpositive sectional curvature. An important example of such a manifold is the space of symmetric de...
Proximal methods are an important class of algorithms for solving nonsmooth, constrained, large-scal...
Proximal distance algorithms combine the classical penalty method of constrained minimization with d...
We present a hybrid algorithm for optimiz-ing a convex, smooth function over the cone of positive se...
This paper is devoted to the study of a bundle proximal-type algorithm for solving the problem of mi...
ABSTRACT This work is devoted to the study of a proximal decomposition algorithm for solving convex...
The research. concerns the development of algorithms for solving convex optimization problems over t...
In this work, we propose an inexact interior proximal-type algorithm for solving convex second-order...
We propose an algorithm for solving optimization problems defined on a subset of the cone of symmetr...
For arbitrary real matrices F and G, the positive semi-definite Procrustes problem is minimization o...
Symmetric cone optimization, Proximal-like method, Entropy-like distance, Exponential multiplier met...
This thesis is concerned with convex optimization problems over matrix polynomials that are constrai...
Hermitian positive definite (hpd) matrices recur throughout machine learning, statistics, and optimi...
Hermitian positive definite (hpd) matrices recur throughout machine learning, statistics, and optimi...
In this paper, we consider the symmetric cone linear programming(SCLP), by using the Jordan-algebrai...
Proximal methods are an important class of algorithms for solving nonsmooth, constrained, large-scal...
Proximal methods are an important class of algorithms for solving nonsmooth, constrained, large-scal...
Proximal distance algorithms combine the classical penalty method of constrained minimization with d...
We present a hybrid algorithm for optimiz-ing a convex, smooth function over the cone of positive se...
This paper is devoted to the study of a bundle proximal-type algorithm for solving the problem of mi...
ABSTRACT This work is devoted to the study of a proximal decomposition algorithm for solving convex...
The research. concerns the development of algorithms for solving convex optimization problems over t...
In this work, we propose an inexact interior proximal-type algorithm for solving convex second-order...
We propose an algorithm for solving optimization problems defined on a subset of the cone of symmetr...
For arbitrary real matrices F and G, the positive semi-definite Procrustes problem is minimization o...
Symmetric cone optimization, Proximal-like method, Entropy-like distance, Exponential multiplier met...
This thesis is concerned with convex optimization problems over matrix polynomials that are constrai...
Hermitian positive definite (hpd) matrices recur throughout machine learning, statistics, and optimi...
Hermitian positive definite (hpd) matrices recur throughout machine learning, statistics, and optimi...
In this paper, we consider the symmetric cone linear programming(SCLP), by using the Jordan-algebrai...
Proximal methods are an important class of algorithms for solving nonsmooth, constrained, large-scal...
Proximal methods are an important class of algorithms for solving nonsmooth, constrained, large-scal...
Proximal distance algorithms combine the classical penalty method of constrained minimization with d...
We present a hybrid algorithm for optimiz-ing a convex, smooth function over the cone of positive se...