Distributionally Robust Optimization with Confidence Bands for Probability Density Functions

Xi Chen, Qihang Lin, Guanglin Xu
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引用次数: 6

Abstract

Distributionally robust optimization (DRO) has been introduced for solving stochastic programs in which the distribution of the random variables is unknown and must be estimated by samples from that distribution. A key element of DRO is the construction of the ambiguity set, which is a set of distributions that contains the true distribution with a high probability. Assuming that the true distribution has a probability density function, we propose a class of ambiguity sets based on confidence bands of the true density function. As examples, we consider the shape-restricted confidence bands and the confidence bands constructed with a kernel density estimation technique. The former allows us to incorporate the prior knowledge of the shape of the underlying density function (e.g., unimodality and monotonicity), and the latter enables us to handle multidimensional cases. Furthermore, we establish the convergence of the optimal value of DRO to that of the underlying stochastic program as the sample size increases. The DRO with our ambiguity set involves functional decision variables and infinitely many constraints. To address this challenge, we apply duality theory to reformulate the DRO to a finite-dimensional stochastic program, which is amenable to a stochastic subgradient scheme as a solution method.
概率密度函数置信带分布鲁棒优化
引入分布鲁棒优化(DRO)来求解随机规划,其中随机变量的分布是未知的,必须从该分布的样本中估计。DRO的一个关键要素是歧义集的构造,它是一组包含高概率真实分布的分布。假设真分布有一个概率密度函数,我们提出了一类基于真密度函数置信带的模糊集。作为例子,我们考虑了形状受限置信带和用核密度估计技术构造的置信带。前者允许我们合并先验的密度函数形状的知识(例如,单模性和单调性),后者使我们能够处理多维情况。进一步,我们建立了随着样本量的增加,DRO的最优值收敛于底层随机规划的最优值。该模糊集的DRO涉及函数决策变量和无穷多个约束。为了解决这一挑战,我们应用对偶理论将DRO重新表述为有限维随机规划,该规划适用于随机亚梯度格式作为求解方法。
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