Article ID: | iaor19971092 |
Country: | Netherlands |
Volume: | 71 |
Issue: | 3 |
Start Page Number: | 327 |
End Page Number: | 351 |
Publication Date: | Dec 1995 |
Journal: | Mathematical Programming (Series A) |
Authors: | Magnanti Thomas L., Perakis Georgia |
Keywords: | programming: nonlinear, computational analysis |
In this paper, the authors propose a concept of polynomiality for variational inequality problems and show how to find a near optimal solution of variational inequality problems in a polynomial number of iterations. To establish this result, they build upon insights from several algorithms for linear and nonlinear programs (the ellipsoid algorithm, the method of centers of gravity, the method of inscribed ellipsoids, and Vaidya’s algorithm) to develop a unifying geometric framework for solving variational inequality problems. The analysis rests upon the assumption of strong f-monotonicity, which is weaker than strict and strong monotonicity. Since linear programs satisfy this assumption, the general framework applies to linear programs.