We review our recent results in the development of optimal algorithms for the minimization of a strictly convex quadratic function subject to separable convex inequality constraints and/or linear equality constraints. A unique feature of our algorithms is the theoretically supported bound on the rate of convergence in terms of the bounds on the spectrum of the Hessian of the cost function, independent of representation of the constraints. When applied to the class of convex QP or QPQC problems with the spectrum in a given positive interval and a sparse Hessian matrix, the algorithms enjoy optimal complexity, i.e., they can find an approximate solution at the cost that is proportional to the number of unknowns. The algorithms do not assume r...
We present a globally and superlinearly convergent algorithm for solving convex quadratic programs ...
-Let (QP) be a binary quadratic program that consists in minimizing a quadratic function subject to ...
We describe the outcome of numerical experiments using three approaches for solving convex QP-proble...
An, in a sense, optimal algorithm for minimization of quadratic functions subject to separable conve...
The implementation of the recently proposed semi-monotonic augmented Lagrangian algorithm for the so...
summary:We propose a modification of MPGP algorithm for solving minimizing problem of strictly conve...
The paper deals with an effective implementation of some algorithms for the solution of convex QPQC ...
Let (MQP) be a MIQP that consists in minimizing a quadratic function subject to linear constraints. ...
preprintWe consider the exact solution of problem $(QP)$ that consists in minimizing a quadratic fun...
Consider the minimization problem with a convex separable objective function over a feasible region ...
We study an approach for minimizing a convex quadratic function subject to two quadratic constraints...
A variant of the augmented Lagrangian-type algorithm for strictly convex quadratic programming probl...
AbstractLet (QP) be a 0-1 quadratic program which consists in minimizing a quadratic function subjec...
In this thesis we consider four problems arising from our study of quadratically constrained convex ...
At the intersection of combinatorial and nonlinear optimization, quadratic programming (QP) plays an...
We present a globally and superlinearly convergent algorithm for solving convex quadratic programs ...
-Let (QP) be a binary quadratic program that consists in minimizing a quadratic function subject to ...
We describe the outcome of numerical experiments using three approaches for solving convex QP-proble...
An, in a sense, optimal algorithm for minimization of quadratic functions subject to separable conve...
The implementation of the recently proposed semi-monotonic augmented Lagrangian algorithm for the so...
summary:We propose a modification of MPGP algorithm for solving minimizing problem of strictly conve...
The paper deals with an effective implementation of some algorithms for the solution of convex QPQC ...
Let (MQP) be a MIQP that consists in minimizing a quadratic function subject to linear constraints. ...
preprintWe consider the exact solution of problem $(QP)$ that consists in minimizing a quadratic fun...
Consider the minimization problem with a convex separable objective function over a feasible region ...
We study an approach for minimizing a convex quadratic function subject to two quadratic constraints...
A variant of the augmented Lagrangian-type algorithm for strictly convex quadratic programming probl...
AbstractLet (QP) be a 0-1 quadratic program which consists in minimizing a quadratic function subjec...
In this thesis we consider four problems arising from our study of quadratically constrained convex ...
At the intersection of combinatorial and nonlinear optimization, quadratic programming (QP) plays an...
We present a globally and superlinearly convergent algorithm for solving convex quadratic programs ...
-Let (QP) be a binary quadratic program that consists in minimizing a quadratic function subject to ...
We describe the outcome of numerical experiments using three approaches for solving convex QP-proble...