AbstractFinding feasible points is important in optimization. There are currently two major classes of algorithms to deal with the problem of feasible points. The first class of algorithms (of local nature) is to find an approximate feasible point. Given a neighbourhood of an approximate feasible point, the second class of algorithms is to prove whether a feasible point exists inside this neighbourhood. To the best of our knowledge, no methods have been practically implemented to efficiently find the smallest boxes for bounding the feasible points defined by a system of nonlinear and nonconvex inequalities, unless the feasible set is convex. In this paper, we will present a numerical method to find the smallest boxes for bounding the feasib...
© 2016, Allerton Press, Inc.For a convex programming problem we propose a solution method which belo...
This paper proposes an interior-point algorithm for solving multi-objective linear programming probl...
In multi-objective convex optimization it is necessary to compute an infinite set of nondominated po...
AbstractFinding feasible points is important in optimization. There are currently two major classes ...
Various algorithms can compute approximate feasible points or approximate solutions to equality and ...
Abstract. In validated branch and bound algorithms for global optimization, upper bounds on the glob...
AbstractWe describe two methods for use in constrained optimization problems. One method computes gu...
We present a global error bound for the projected gradient of nonconvex constrained optimization pro...
An algorithm for nding a large feasible n-dimensional interval for constrained global optimization i...
A slack-based feasible interior point method is described which can be derived as a modication of in...
Properties and construction principles of a satisfactory approximation for the set of admissible sol...
AbstractWe introduce two interior point algorithms for minimizing a convex function subject to linea...
AbstractIn this paper an algorithm for solving a linearly constrained nonlinear programming problem ...
We study the local convergence of a primal-dual interior point method for nonlinear programming. A l...
We present a new class of algorithms for determining whether there exists a point x ɛ Rn satisfying ...
© 2016, Allerton Press, Inc.For a convex programming problem we propose a solution method which belo...
This paper proposes an interior-point algorithm for solving multi-objective linear programming probl...
In multi-objective convex optimization it is necessary to compute an infinite set of nondominated po...
AbstractFinding feasible points is important in optimization. There are currently two major classes ...
Various algorithms can compute approximate feasible points or approximate solutions to equality and ...
Abstract. In validated branch and bound algorithms for global optimization, upper bounds on the glob...
AbstractWe describe two methods for use in constrained optimization problems. One method computes gu...
We present a global error bound for the projected gradient of nonconvex constrained optimization pro...
An algorithm for nding a large feasible n-dimensional interval for constrained global optimization i...
A slack-based feasible interior point method is described which can be derived as a modication of in...
Properties and construction principles of a satisfactory approximation for the set of admissible sol...
AbstractWe introduce two interior point algorithms for minimizing a convex function subject to linea...
AbstractIn this paper an algorithm for solving a linearly constrained nonlinear programming problem ...
We study the local convergence of a primal-dual interior point method for nonlinear programming. A l...
We present a new class of algorithms for determining whether there exists a point x ɛ Rn satisfying ...
© 2016, Allerton Press, Inc.For a convex programming problem we propose a solution method which belo...
This paper proposes an interior-point algorithm for solving multi-objective linear programming probl...
In multi-objective convex optimization it is necessary to compute an infinite set of nondominated po...