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Iterative estimation maximization for stochastic linear programs with conditional value-at-risk constraints

机译:具有条件风险值约束的随机线性程序的迭代估计最大化

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摘要

We present a new algorithm, iterative estimation maximization (IEM), for stochastic linear programs with conditional value-at-risk constraints. IEM iteratively constructs a sequence of linear optimization problems, and solves them sequentially to find the optimal solution. The size of the problem that IEM solves in each iteration is unaffected by the size of random sample points, which makes it extremely efficient for real-world, large-scale problems. We prove the convergence of IEM, and give a lower bound on the number of sample points required to probabilistically bound the solution error. We also present computational performance on large problem instances and a financial portfolio optimization example using an S&P 500 data set.
机译:我们针对具有条件风险值约束的随机线性程序,提出了一种新算法,即迭代估计最大化(IEM)。 IEM迭代构造一系列线性优化问题,并依次求解它们以找到最佳解。 IEM在每次迭代中解决的问题的大小不受随机样本点大小的影响,这使其对于现实世界中的大规模问题极为有效。我们证明了IEM的收敛性,并给出了概率限制求解误差所需的采样点数量的下限。我们还使用S&P 500数据集介绍了大问题实例的计算性能以及一个金融投资组合优化示例。

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