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Original Articles

A generic primal–dual interior-point method for semidefinite optimization based on a new class of kernel functions

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Pages 387-403 | Received 28 Feb 2007, Published online: 08 Sep 2009
 

Abstract

In this paper, we present a class of polynomial-time primal–dual interior-point methods (IPMs) for semi-definite optimization based on a new class of kernel functions. This class is fairly general and includes the class of finite kernel functions [Y.Q. Bai, M. El Ghami and C. Roos, A new efficient large-update primal–dual interior-point method based on a finite barrier, SIAM J. Optim. 13(3) (2003), pp. 766–782]: the corresponding barrier functions have a finite value at the boundary of the feasible region. They are not exponentially convex and also not strongly convex like many usual barrier functions. We show that the IPMs based on these functions have favourable complexity results. To achieve this, several new tools are derived in the analysis. The kernel functions depend on parameters p∈[0, 1] and σ≥1. When those parameters are appropriately chosen, then the iteration bound of large-update IPMs based on these functions, coincide with the currently best known bounds for primal–dual IPMs.

AMS Subject Classification :

Acknowledgements

The authors kindly acknowledge the help of the guest editor and two anonymous referees in improving the readability of the paper.

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