In this paper we consider the standard linear SDP problem, and its low rank nonlinear programming reformulation, based on a Gramian representation of a positive semidefinite matrix. For this nonconvex quadratic problem with quadratic equality constraints, we give necessary and sufficient conditions of global optimality expressed in terms of the Lagrangian function
We establish new necessary and sufficient optimality conditions for global optimization problems. In...
Abstract. A deterministic global optimization approach is proposed for nonconvex constrained nonline...
In this paper we consider low-rank semidefinite programming (LRSDP) relaxations of combinatorial qu...
In this paper we consider the standard linear SDP problem, and its low rank nonlinear programming r...
A large number of nonlinear optimization problems involve bilinear, quadratic and/or polynomial func...
In this paper we propose a global optimality criterion for globally minimizing a quadratic form over...
In this paper we present sufficient conditions for global optimality of non-convex quadratic program...
In this article, we present some global optimality conditions for mixed quadratic programming proble...
We derive a new genericity result for nonlinear semidefinite programming (NLSDP). Namely, almost all...
We present sufficient conditions for the global optimality of bivalent nonconvex quadratic programs ...
In this article, by using the Lagrangian function, we investigate the sufficient global optimality c...
Abstract In this paper, we develop necessary conditions for global optimality that apply to non-line...
In this paper we consider low-rank semidefinite programming (LRSDP) relaxations of combinatorial qua...
In this paper we propose a global algorithm for solving nonlinear semidefinite programming problems....
It is well known that the duality theory for linear programming (LP) is powerful and elegant and lie...
We establish new necessary and sufficient optimality conditions for global optimization problems. In...
Abstract. A deterministic global optimization approach is proposed for nonconvex constrained nonline...
In this paper we consider low-rank semidefinite programming (LRSDP) relaxations of combinatorial qu...
In this paper we consider the standard linear SDP problem, and its low rank nonlinear programming r...
A large number of nonlinear optimization problems involve bilinear, quadratic and/or polynomial func...
In this paper we propose a global optimality criterion for globally minimizing a quadratic form over...
In this paper we present sufficient conditions for global optimality of non-convex quadratic program...
In this article, we present some global optimality conditions for mixed quadratic programming proble...
We derive a new genericity result for nonlinear semidefinite programming (NLSDP). Namely, almost all...
We present sufficient conditions for the global optimality of bivalent nonconvex quadratic programs ...
In this article, by using the Lagrangian function, we investigate the sufficient global optimality c...
Abstract In this paper, we develop necessary conditions for global optimality that apply to non-line...
In this paper we consider low-rank semidefinite programming (LRSDP) relaxations of combinatorial qua...
In this paper we propose a global algorithm for solving nonlinear semidefinite programming problems....
It is well known that the duality theory for linear programming (LP) is powerful and elegant and lie...
We establish new necessary and sufficient optimality conditions for global optimization problems. In...
Abstract. A deterministic global optimization approach is proposed for nonconvex constrained nonline...
In this paper we consider low-rank semidefinite programming (LRSDP) relaxations of combinatorial qu...