Article ID: | iaor20003710 |
Country: | Germany |
Volume: | 86 |
Issue: | 3 |
Start Page Number: | 533 |
End Page Number: | 563 |
Publication Date: | Jan 1999 |
Journal: | Mathematical Programming |
Authors: | Peng J.-M., Lin Z. |
Keywords: | programming: linear |
In this paper, we propose a non-interior continuation method for solving generalized linear complementarity problems (GLCP) introduced by Cottle and Dantzig. The method is based on a smoothing function derived from the exponential penalty function first introduced by Kort and Bertsekas for constrained minimization. This smoothing function can also be viewed as a natural extension of Chen–Mangasarian's neural network smooth function. By using the smoothing function, we approximate GLCP as a family of parameterized smooth equations. An algorithm is presented to follow the smoothing path. Under suitable assumptions, it is shown that the algorithm is globally convergent and local Q-quadratically convergent. Few preliminary numerical results are also reported.