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A Model of Multistage Risk-Averse Stochastic Optimization and its Solution by Scenario-Based Decomposition Algorithms

机译:基于场景的分解算法的多级风险厌恶随机优化模型及其解决方法

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摘要

Stochastic optimization models based on risk-averse measures are of essential importance in financial management and business operations. This paper studies new algorithms for a popular class of these models, namely, the mean-deviation models in multistage decision making under uncertainty. It is argued that these types of problems enjoy a scenario-decomposable structure, which could be utilized in an efficient progressive hedging procedure. In case that linkage constraints arise in reformulations of the original problem, a Lagrange progressive hedging algorithm could be utilized to solve the reformulated problem. Convergence results of the algorithms are obtained based on the recent development of the Lagrangian form of stochastic variational inequalities. Numerical results are provided to show the effectiveness of the proposed algorithms.
机译:基于风险厌恶措施的随机优化模型对于财务管理和业务运营至关重要。本文研究了流行的这些模型的新算法,即在不确定性下的多级决策中的平均偏差模型。认为这些类型的问题享有一种情况 - 可分解结构,可以在高效的渐进性对冲程序中使用。在原始问题的重新装配中出现的链接约束的情况下,可以利用拉格朗日逐行对冲算法来解决重新设计的问题。基于Lagrangian形式的随机变分不等式的最近发展获得了算法的收敛结果。提供了数值结果以显示所提出的算法的有效性。

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