In this paper, we describe a new active-set algorithmic framework for minimizing a non-convex function over the unit simplex. At each iteration, the method makes use of a rule for identifying active variables (i.e., variables that are zero at a stationary point) and specific directions (that we name active-set gradient related directions) satisfying a new “nonorthogonality” type of condition. We prove global convergence to stationary points when using an Armijo line search in the given framework. We further describe three different examples of active-set gradient related directions that guarantee linear convergence rate (under suitable assumptions). Finally, we report numerical experiments showing the effectiveness of the approach
Active set algorithms, such as the projected gradient method in nonlinear optimization, are designed...
We propose a numerical algorithm for solving smooth nonlinear programming problems with a large numb...
SIGLECNRS RS 14802 E / INIST-CNRS - Institut de l'Information Scientifique et TechniqueFRFranc
In this paper, we describe a new active-set algorithmic framework for minimizing a non-convex functi...
In this paper, we describe a two-stage method for solving optimization problems with bound constrain...
The l1-ball is a nicely structured feasible set that is widely used in many fields (e.g., machine le...
An algorithm for solving linearly constrained optimization problems is proposed. The search directio...
In this thesis, new methods for large-scale non-linear optimization are presented. In particular, an...
AbstractThe paper suggests a new implementation of the active set method for solving linear programm...
summary:We employ the active set strategy which was proposed by Facchinei for solving large scale bo...
International audienceThe use of non-convex sparse regularization has attracted much interest when e...
The use of non-convex sparse regularization has attracted much interest when estimating a very spars...
summary:A new algorithm for solving large scale bound constrained minimization problems is proposed....
We present an active-set method for minimizing an objective that is the sum of a convex quadratic an...
Abstract An algorithm for computing a stationary point of a quadratic program with box constraints(...
Active set algorithms, such as the projected gradient method in nonlinear optimization, are designed...
We propose a numerical algorithm for solving smooth nonlinear programming problems with a large numb...
SIGLECNRS RS 14802 E / INIST-CNRS - Institut de l'Information Scientifique et TechniqueFRFranc
In this paper, we describe a new active-set algorithmic framework for minimizing a non-convex functi...
In this paper, we describe a two-stage method for solving optimization problems with bound constrain...
The l1-ball is a nicely structured feasible set that is widely used in many fields (e.g., machine le...
An algorithm for solving linearly constrained optimization problems is proposed. The search directio...
In this thesis, new methods for large-scale non-linear optimization are presented. In particular, an...
AbstractThe paper suggests a new implementation of the active set method for solving linear programm...
summary:We employ the active set strategy which was proposed by Facchinei for solving large scale bo...
International audienceThe use of non-convex sparse regularization has attracted much interest when e...
The use of non-convex sparse regularization has attracted much interest when estimating a very spars...
summary:A new algorithm for solving large scale bound constrained minimization problems is proposed....
We present an active-set method for minimizing an objective that is the sum of a convex quadratic an...
Abstract An algorithm for computing a stationary point of a quadratic program with box constraints(...
Active set algorithms, such as the projected gradient method in nonlinear optimization, are designed...
We propose a numerical algorithm for solving smooth nonlinear programming problems with a large numb...
SIGLECNRS RS 14802 E / INIST-CNRS - Institut de l'Information Scientifique et TechniqueFRFranc