Logarithmic barrier decomposition-based interior point methods for stochastic symmetric programming

Autor: K. A. Ariyawansa, Baha Alzalg
Rok vydání: 2014
Předmět:
Zdroj: Journal of Mathematical Analysis and Applications. 409:973-995
ISSN: 0022-247X
DOI: 10.1016/j.jmaa.2013.07.075
Popis: We introduce and study two-stage stochastic symmetric programs with recourse to handle uncertainty in data defining (deterministic) symmetric programs in which a linear function is minimized over the intersection of an affine set and a symmetric cone. We present a Benders’ decomposition-based interior point algorithm for solving these problems and prove its polynomial complexity. Our convergence analysis proved by showing that the log barrier associated with the recourse function of stochastic symmetric programs behaves a strongly self-concordant barrier and forms a self-concordant family on the first stage solutions. Since our analysis applies to all symmetric cones, this algorithm extends Zhao’s results [G. Zhao, A log barrier method with Benders’ decomposition for solving two-stage stochastic linear programs, Math. Program. Ser. A 90 (2001) 507–536] for two-stage stochastic linear programs, and Mehrotra and Ozevin’s results [S. Mehrotra, M.G. Ozevin, Decomposition-based interior point methods for two-stage stochastic semidefinite programming, SIAM J. Optim. 18 (1) (2007) 206–222] for two-stage stochastic semidefinite programs.
Databáze: OpenAIRE