Title of article :
A homogeneous predictor-corrector algorithm for stochastic nonsymmetric convex conic optimization with discrete support
Author/Authors :
Alzalg ، Baha Department of Mathematics - University of Jordan , Alabedalhadi ، Mohammad Department of Applied Science - Balqa Applied University
Abstract :
We consider a stochastic convex optimization problem over nonsymmetric cones with discrete support. This class of optimization problems has not been studied yet. By using a logarithmically homogeneous self-concordant barrier function, we present a homogeneous predictor-corrector interior-point algorithm for solving stochastic nonsymmetric conic optimization problems. We also derive an iteration bound for the proposed algorithm. Our main result is that we uniquely combine a nonsymmetric algorithm with efficient methods for computing the predictor and corrector directions. Finally, we describe a realistic application and present computational results for instances of the stochastic facility location problem formulated as a stochastic nonsymmetric convex conic optimization problem.
Keywords :
Convex optimization , Nonsymmetric programming , Stochastic programming , Predictor , corrector methods , Interior , point methods
Journal title :
Communications in Combinatorics and Optimization
Journal title :
Communications in Combinatorics and Optimization