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A large-update interior-point algorithm for convex quadratic semi-definite optimization based on a new kernel function
Authors:Ming Wang Zhang
Institution:1. College of Science, China Three Gorges University, Yichang, 443002, P. R. China
Abstract:In this paper, we present a large-update interior-point algorithm for convex quadratic semi-definite optimization based on a new kernel function. The proposed function is strongly convex. It is not self-regular function and also the usual logarithmic function. The goal of this paper is to investigate such a kernel function and show that the algorithm has favorable complexity bound in terms of the elegant analytic properties of the kernel function. The complexity bound is shown to be $O\left( {\sqrt n \left( {\log n} \right)^2 \log \frac{n} {\varepsilon }} \right)$ . This bound is better than that by the classical primal-dual interior-point methods based on logarithmic barrier function and recent kernel functions introduced by some authors in optimization fields. Some computational results have been provided.
Keywords:Convex quadratic semi-definite optimization  kernel function  interior-point algorithm~large-update method  complexity
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