Variable metric techniques are a crucial ingredient in many first order optimization algorithms. In practice, they consist in a rule for computing, at each iteration, a suitable symmetric, positive definite scaling matrix to be multiplied to the gradient vector. Besides quasi-Newton BFGS techniques, which represented the state-of-the-art since the 70's, new approaches have been proposed in the last decade in the framework of imaging problems expressed in variational form. Such recent approaches are appealing since they can be applied to large scale problems without adding significant computational costs and they produce an impressive improvement in the practical performances of first order methods. These scaling strategies are strictly conn...
We consider the minimization of a function G defined on RN, which is the sum of a (non necessarily c...
This paper deals with new variable-metric algorithms for nonsmooth optimization problems, the so-cal...
Two recent suggestions in the field of variable metric methods for function minimization are reviewe...
Variable metric techniques are a crucial ingredient in many first order optimization algorithms. In ...
Minimization problems often occur in modeling phenomena dealing with real-life applications that now...
Minimization problems often occur in modeling phenomena dealing with real-life applications that now...
Variable Metric Methods are "Newton-Raphson-like " algorithms for unconstrained minimizati...
Typical applications in signal and image processing often require the numerical solution of large\u2...
Abstract. This is a method for determining numerically local minima of differentiable functions of s...
International audienceWe consider the minimization of a function $G$ defined on $R^N$, which is the ...
Abstract — The scaled gradient projection (SGP) method is a variable metric forward-backward algorit...
The scaled gradient projection (SGP) method is a variable metric forward-backward algorithm designed...
In this paper variable metric algorithms are extended to solve general nonlinear programming proble...
The selection of updating formulas for the H matrix and the subproblem of one-dimensional search are...
We develop a class of methods for minimizing a nondifferentiable function which is the maximum of a...
We consider the minimization of a function G defined on RN, which is the sum of a (non necessarily c...
This paper deals with new variable-metric algorithms for nonsmooth optimization problems, the so-cal...
Two recent suggestions in the field of variable metric methods for function minimization are reviewe...
Variable metric techniques are a crucial ingredient in many first order optimization algorithms. In ...
Minimization problems often occur in modeling phenomena dealing with real-life applications that now...
Minimization problems often occur in modeling phenomena dealing with real-life applications that now...
Variable Metric Methods are "Newton-Raphson-like " algorithms for unconstrained minimizati...
Typical applications in signal and image processing often require the numerical solution of large\u2...
Abstract. This is a method for determining numerically local minima of differentiable functions of s...
International audienceWe consider the minimization of a function $G$ defined on $R^N$, which is the ...
Abstract — The scaled gradient projection (SGP) method is a variable metric forward-backward algorit...
The scaled gradient projection (SGP) method is a variable metric forward-backward algorithm designed...
In this paper variable metric algorithms are extended to solve general nonlinear programming proble...
The selection of updating formulas for the H matrix and the subproblem of one-dimensional search are...
We develop a class of methods for minimizing a nondifferentiable function which is the maximum of a...
We consider the minimization of a function G defined on RN, which is the sum of a (non necessarily c...
This paper deals with new variable-metric algorithms for nonsmooth optimization problems, the so-cal...
Two recent suggestions in the field of variable metric methods for function minimization are reviewe...