抽样可行集的sdp和体积逼近

IF 0.4 Q4 MATHEMATICS, APPLIED
Tolis Chalkis, Vissarion Fisikopoulos, Panagiotis Repouskos, Elias P. Tsigaridas
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引用次数: 4

摘要

我们给出了在半定程序的可行域谱面体的内部和边界采样点问题的算法、复杂性和实现结果。我们的主要工具是随机行走。我们定义并分析了一组原始几何运算,这些运算利用了spectrahedra的代数性质和多项式特征值问题,并实现了广泛的有效随机游动集合。我们展示了随机行走,实验表明,与之前在理论或应用中(例如Hit and Run)从spectrahedra采样时使用的混合时间相比,混合时间更快。连续地,随机游动的多样性使我们能够从一般概率分布中进行采样,例如在许多应用中经常出现的对数凹分布族。我们应用我们的工具来计算(i)谱面体的体积和(ii)来自鲁棒最优控制的函数的期望。我们提供了我们方法的C++开源实现,该实现可以有效地扩展到维度200。我们在各种数据集上说明了它的效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sampling the feasible sets of SDPs and volume approximation
We present algorithmic, complexity, and implementation results on the problem of sampling points in the interior and the boundary of a spectrahedron, that is the feasible region of a semidefinite program. Our main tool is random walks. We define and analyze a set of primitive geometric operations that exploits the algebraic properties of spectrahedra and the polynomial eigenvalue problem and leads to the realization of a broad collection of efficient random walks. We demonstrate random walks that experimentally show faster mixing time than the ones used previously for sampling from spectrahedra in theory or applications, for example Hit and Run. Consecutively, the variety of random walks allows us to sample from general probability distributions, for example the family of log-concave distributions which arise frequently in numerous applications. We apply our tools to compute (i) the volume of a spectrahedron and (ii) the expectation of functions coming from robust optimal control. We provide a C++ open source implementation of our methods that scales efficiently up to dimension 200. We illustrate its efficiency on various data sets.
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CiteScore
0.70
自引率
0.00%
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