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Primal-Dual Interior-Point Algorithms for Semidefinite Optimization Based on a Simple Kernel Function

机译:基于简单核函数的半确定性优化的本原-对偶内点算法

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Interior-point methods (IPMs) for semidefinite optimization (SDO) have been studied intensively, due to their polynomial complexity and practical efficiency. Recently, J. Peng et al. introduced so-called self-regular kernel (and barrier) functions and designed primal-dual interior-point algorithms based on self-regular proximities for linear optimization (LO) problems. They also extended the approach for LO to SDO. In this paper we present a primal-dual interior-point algorithm for SDO problems based on a simple kernel function which was first presented at the Proceedings of Industrial Symposium and Optimization Day, Australia, November 2002; the function is not self-regular. We derive the complexity analysis for algorithms based on this kernel function, both with large- and small-updates. The complexity bounds are Ο(qn)logn/∈and Ο(q2n)logn/∈, respectively, which are as good as those in the linear case.
机译:由于多项式的复杂性和实际效率,对用于半确定性优化(SDO)的内点方法(IPM)进行了深入研究。最近,J。Peng等人。引入了所谓的自规则核(和势垒)函数,并设计了基于自规则邻近性的原始对偶内点算法以解决线性优化(LO)问题。他们还将LO的方法扩展到SDO。在本文中,我们提出了一种基于简单核函数的SDO问题的原对偶内点算法,该算法首先在2002年11月澳大利亚工业研讨会和最优化日论文集上提出;该功能不是自规则的。我们基于此内核功能(包括大更新和小更新)导出了算法的复杂度分析。复杂度边界分别为Ο(qn)logn /∈和Ο(q2n)logn /∈,与线性情况下的一样好。

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