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首页> 外文期刊>SIAM Journal on Optimization: A Publication of the Society for Industrial and Applied Mathematics >A CUTTING SURFACE ALGORITHM FOR SEMI-INFINITE CONVEX PROGRAMMING WITH AN APPLICATION TO MOMENT ROBUST OPTIMIZATION
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A CUTTING SURFACE ALGORITHM FOR SEMI-INFINITE CONVEX PROGRAMMING WITH AN APPLICATION TO MOMENT ROBUST OPTIMIZATION

机译:半无限凸规划的切削表面算法及其在矩鲁棒优化中的应用

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摘要

We present and analyze a central cutting surface algorithm for general semi-infinite convex optimization problems and use it to develop a novel algorithm for distributionally robust optimization problems in which the uncertainty set consists of probability distributions with given bounds on their moments. Moments of arbitrary order, as well as nonpolynomial moments, can be included in the formulation. We show that this gives rise to a hierarchy of optimization problems with decreasing levels of risk-aversion, with classic robust optimization at one end of the spectrum and stochastic programming at the other. Although our primary motivation is to solve distributionally robust optimization problems with moment uncertainty, the cutting surface method for general semi-infinite convex programs is also of independent interest. The proposed method is applicable to problems with nondifferentiable semi-infinite constraints indexed by an infinite dimensional index set. Examples comparing the cutting surface algorithm to the central cutting plane algorithm of Kortanek and No demonstrate the potential of our algorithm even in the solution of traditional semi-infinite convex programming problems, whose constraints are differentiable, and are indexed by an index set of low dimension. After the rate of convergence analysis of the cutting surface algorithm, we extend the authors' moment matching scenario generation algorithm to a probabilistic algorithm that finds optimal probability distributions subject to moment constraints. The combination of this distribution optimization method and the central cutting surface algorithm yields a solution to a family of distributionally robust optimization problems that are considerably more general than the ones proposed to date.
机译:我们提出并分析了针对一般半无限凸优化问题的中心切削表面算法,并使用它来开发一种针对分布鲁棒优化问题的新算法,其中不确定性集由在其矩上具有给定界限的概率分布组成。公式中可以包含任意阶数的矩以及非多项式矩。我们表明,这会导致优化问题的层次结构随着风险规避程度的降低而降低,经典稳健的优化在频谱的一端,而随机规划则在另一端。尽管我们的主要动机是解决具有力矩不确定性的分布鲁棒优化问题,但一般半无限凸程序的切削面方法也引起了人们的关注。所提出的方法适用于具有由无穷维索引集索引的不可微半无限约束的问题。实例将切削表面算法与Kortanek和No的中心切削平面算法进行了比较,即使在解决传统半无限凸规划问题(约束条件可微且由低维索引集进行索引)的解决方案中,也证明了我们算法的潜力。经过对切削面算法的收敛速度分析,我们将作者的矩匹配场景生成算法扩展到了一种概率算法,该算法找到受矩约束的最优概率分布。这种分布优化方法和中央切削表面算法的结合为一系列分布稳健的优化问题提供了解决方案,这些问题比迄今为止提出的解决方案要普遍得多。

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