We present an algorithm which combines standard active set strategies with the gradient projection method for the solution of quadratic programming problems subject to bounds. We show, in particular, that if the quadratic is bounded below on the feasible set then termination occurs at a stationary point in a finite number of iterations. Moreover, if all stationary points are nondegenerate, termination occurs at a local minimizer. A numerical comparison of the algorithm based on the gradient projection algorithm with a standard active set strategy shows that on mildly degenerate problems the gradient projection algorithm requires considerable less iterations and time than the active set strategy. On nondegenerate problems the number of itera...
AbstractSequential quadratic programming (SQP) has been one of the most important methods for solvin...
Two new closely related concepts are introduced that depend on a positive constant $\Gamma$. An iter...
Primal-dual gradient methods are tractable approaches to solve quadratic programs, especially for la...
An algorithm is proposed that uses the conjugate gradient method to explore the face of the feasibl...
We propose a gradient-based method for quadratic programming problems with a single linear constrain...
We propose a gradient-based method for quadratic programming problems with a single linear constrain...
In this work we focus our attention on the quadratic subproblem of trust-region algorithms for large...
Computational methods are considered for finding a point that satisfies the second-order necessary c...
Computational methods are considered for finding a point satisfying the second-order necessary condi...
We propose an algorithm for linear programming, which we call the Sequential Projection algorithm. T...
We propose a feasible active set method for convex quadratic programming prob- lems with nonnegat...
In this paper, we present a new method for solving quadratic programming problems, not strictly conv...
Abstract. The dual of the strictly convex quadratic programming problem with unit bounds is posed as...
We propose a numerical algorithm for solving smooth nonlinear programming problems with a large numb...
Abstract An algorithm for computing a stationary point of a quadratic program with box constraints(...
AbstractSequential quadratic programming (SQP) has been one of the most important methods for solvin...
Two new closely related concepts are introduced that depend on a positive constant $\Gamma$. An iter...
Primal-dual gradient methods are tractable approaches to solve quadratic programs, especially for la...
An algorithm is proposed that uses the conjugate gradient method to explore the face of the feasibl...
We propose a gradient-based method for quadratic programming problems with a single linear constrain...
We propose a gradient-based method for quadratic programming problems with a single linear constrain...
In this work we focus our attention on the quadratic subproblem of trust-region algorithms for large...
Computational methods are considered for finding a point that satisfies the second-order necessary c...
Computational methods are considered for finding a point satisfying the second-order necessary condi...
We propose an algorithm for linear programming, which we call the Sequential Projection algorithm. T...
We propose a feasible active set method for convex quadratic programming prob- lems with nonnegat...
In this paper, we present a new method for solving quadratic programming problems, not strictly conv...
Abstract. The dual of the strictly convex quadratic programming problem with unit bounds is posed as...
We propose a numerical algorithm for solving smooth nonlinear programming problems with a large numb...
Abstract An algorithm for computing a stationary point of a quadratic program with box constraints(...
AbstractSequential quadratic programming (SQP) has been one of the most important methods for solvin...
Two new closely related concepts are introduced that depend on a positive constant $\Gamma$. An iter...
Primal-dual gradient methods are tractable approaches to solve quadratic programs, especially for la...