A copositive Farkas lemma and minimally exact conic relaxations for robust quadratic optimization with binary and quadratic constraints

2019 ◽  
Vol 47 (6) ◽  
pp. 530-536 ◽  
Author(s):  
N.H. Chieu ◽  
T.D. Chuong ◽  
V. Jeyakumar ◽  
G. Li
Author(s):  
Ahmadreza Marandi ◽  
Aharon Ben-Tal ◽  
Dick den Hertog ◽  
Bertrand Melenberg

We derive computationally tractable formulations of the robust counterparts of convex quadratic and conic quadratic constraints that are concave in matrix-valued uncertain parameters. We do this for a broad range of uncertainty sets. Our results provide extensions to known results from the literature. We also consider hard quadratic constraints: those that are convex in uncertain matrix-valued parameters. For the robust counterpart of such constraints, we derive inner and outer tractable approximations. As an application, we show how to construct a natural uncertainty set based on a statistical confidence set around a sample mean vector and covariance matrix and use this to provide a tractable reformulation of the robust counterpart of an uncertain portfolio optimization problem. We also apply the results of this paper to norm approximation problems. Summary of Contribution: This paper develops new theoretical results and algorithms that extend the scope of a robust quadratic optimization problem. More specifically, we derive computationally tractable formulations of the robust counterparts of convex quadratic and conic quadratic constraints that are concave in matrix-valued uncertain parameters. We also consider hard quadratic constraints: those that are convex in uncertain matrix-valued parameters. For the robust counterpart of such constraints, we derive inner and outer tractable approximations.


Author(s):  
ali ashrafi ◽  
Arezu Zare

This paper examines a complex fractional quadratic optimization problem subject to two quadratic constraints. The original problem is transformed into a parametric quadratic programming problem by the well-known classical Dinkelbach method. Then a semidefinite and Lagrangian dual optimization approaches are presented to solve the nonconvex parametric problem at each iteration of the bisection and generalized Newton algorithms. Finally, the numerical results demonstrate the effectiveness of the proposed approaches.


2007 ◽  
Vol 18 (1) ◽  
pp. 1-28 ◽  
Author(s):  
Zhi‐Quan Luo ◽  
Nicholas D. Sidiropoulos ◽  
Paul Tseng ◽  
Shuzhong Zhang

Sign in / Sign up

Export Citation Format

Share Document