中心路径宽邻域对称优化的全Nesterov-Todd步不可行的内点法。

G Lesaja, G Q Wang, A Oganian
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引用次数: 2

摘要

本文提出了一种求解对称优化问题的改进内点法。对称优化问题是对称锥上的线性优化问题。特别是,该方法可以有效地应用于SO的一个重要实例,即控制表格调整(CTA)问题,这是用于表格数据统计披露限制(SDL)的方法。所提出的方法是一个完整的Nesterov-Todd步不可行的IPM。该算法收敛于任意起始点的ε-近似解,无论可行或不可行。每次迭代由可行性步骤和若干定心步骤组成,但与同类算法相比,迭代得到的中心路径的邻域更宽,这是该方法的主要改进之处。然而,目前最著名的迭代边界已知的不可行的短步方法仍然实现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Full Nesterov-Todd Step Infeasible Interior-point Method for Symmetric Optimization in the Wider Neighborhood of the Central Path.

In this paper, an improved Interior-Point Method (IPM) for solving symmetric optimization problems is presented. Symmetric optimization (SO) problems are linear optimization problems over symmetric cones. In particular, the method can be efficiently applied to an important instance of SO, a Controlled Tabular Adjustment (CTA) problem which is a method used for Statistical Disclosure Limitation (SDL) of tabular data. The presented method is a full Nesterov-Todd step infeasible IPM for SO. The algorithm converges to ε-approximate solution from any starting point whether feasible or infeasible. Each iteration consists of the feasibility step and several centering steps, however, the iterates are obtained in the wider neighborhood of the central path in comparison to the similar algorithms of this type which is the main improvement of the method. However, the currently best known iteration bound known for infeasible short-step methods is still achieved.

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