The Primal-Dual Potential Reduction Algorithm for Positive Semi-Definite Programming

The Primal-Dual Potential Reduction Algorithm for Positive Semi-Definite Programming

Year:    2003

Author:    Si-Ming Huang

Journal of Computational Mathematics, Vol. 21 (2003), Iss. 3 : pp. 339–346

Abstract

In this paper we introduce a primal-dual potential reduction algorithm for positive semi-definite programming. Using the symetric preserving scalings for both primal and dual interior matrices, we can construct an algorithm which is very similar to the primal-dual potential reduction algorithm of Huang and Kortanek [6] for linear programming. The complexity of the algorithm is either $O(n \log(X^0\cdot S^0/\epsilon))$ or $O(\sqrt{n}\log(X^0\cdot S^0/\epsilon))$ depends on the value of $\rho$ in the primal-dual potential function, where $X^0$ and $S^0$ is the initial interior matrices of the positive semi-definite programming.

You do not have full access to this article.

Already a Subscriber? Sign in as an individual or via your institution

Journal Article Details

Publisher Name:    Global Science Press

Language:    English

DOI:    https://doi.org/2003-JCM-10262

Journal of Computational Mathematics, Vol. 21 (2003), Iss. 3 : pp. 339–346

Published online:    2003-01

AMS Subject Headings:   

Copyright:    COPYRIGHT: © Global Science Press

Pages:    8

Keywords:    Positive semi-definite programming Potential reduction algorithms Complexity.

Author Details

Si-Ming Huang