On Bridging the Gap Between Stochastic Integer Programming and MIP Solver Technologies
Author(s) -
Gyana R. Parija,
Shabbir Ahmed,
Alan J. King
Publication year - 2004
Publication title -
informs journal on computing
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.403
H-Index - 80
eISSN - 1526-5528
pISSN - 1091-9856
DOI - 10.1287/ijoc.1020.0005
Subject(s) - bridging (networking) , solver , integer programming , computer science , mathematical optimization , software , integer (computer science) , branch and price , class (philosophy) , stochastic programming , linear programming , theoretical computer science , mathematics , programming language , artificial intelligence , computer network
Stochastic integer programs (SIPs) represent a very difficult class of optimization problems arising from the presence of both uncertainty and discreteness in planning and decision problems. Although applications of SIPs are abundant, nothing is available by way of computational software. On the other hand, commercial software packages for solvingdeterministic integer programs have been around for quite a few years, and more recently, a package for solving stochasticlinear programs has been released. In this paper, we describe how these software tools can be integrated and exploited for the effective solution of general-purpose SIPs. We demonstrate these ideas on four problem classes from the literature and show significant computational advantages.
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