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A Large-update Interior-point Algorithm for Convex Quadratic Semi-definite Optimization Based on a New Kernel Function 被引量:9

A Large-update Interior-point Algorithm for Convex Quadratic Semi-definite Optimization Based on a New Kernel Function
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摘要 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(√n(logn)2 log e/n). This bound is better than that by the classical primal-dual interior-point methods based on logarithmic barrier function and in optimization fields. Some computational results recent kernel functions introduced by some authors have been provided. 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(√n(logn)2 log e/n). This bound is better than that by the classical primal-dual interior-point methods based on logarithmic barrier function and in optimization fields. Some computational results recent kernel functions introduced by some authors have been provided.
机构地区 College of Science
出处 《Acta Mathematica Sinica,English Series》 SCIE CSCD 2012年第11期2313-2328,共16页 数学学报(英文版)
基金 Supported by Natural Science Foundation of Hubei Province of China (Grant No. 2008CDZ047)
关键词 Convex quadratic semi-definite optimization kernel function interior-point algorithm^large-update method complexity Convex quadratic semi-definite optimization, kernel function, interior-point algorithm^large-update method, complexity
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  • 1Katsuki Fujisawa,Masakazu Kojima,Kazuhide Nakata.Exploiting sparsity in primal-dual interior-point methods for semidefinite programming[J].Mathematical Programming (-).1997(1-3)
  • 2Klerk,E.de, Interior point methods for SDP, Ph[]..1997
  • 3Alizadeh,F.Interior point methods in semidefinite programming with appication to combinatorial optimization, SIAM J[].Optica Acta.1995

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