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Mastering Uncertainty: Towards Robust Multistage Optimization with Decision Dependent Uncertainty

机译:掌握不确定性:基于决策的不确定性实现稳健的多阶段优化

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We investigate, as a special case of robust optimization, integer linear programs with variables being either existentially or universally quantified. They can be interpreted as two-person zero-sum games between an existential and a universal player. In this setting the existential player must ensure the fulfillment of a system of linear constraints, while the universal variables can range within given intervals, trying to make the fulfillment impossible. We extend this approach by adding a linear constraint system the universal player must obey. Consequently, existential and universal variable assignments in early decision stages now can restrain possible universal variable assignments later on and vice versa resulting in a multistage optimization problem with decision dependent uncertainty. We present novel insights in structure and complexity.
机译:作为稳健优化的一种特殊情况,我们研究了整数线性程序,其中变量存在或普遍量化。可以将它们解释为存在玩家和通用玩家之间的两人零和游戏。在这种情况下,存在的参与者必须确保线性约束系统的实现,而通用变量可以在给定的间隔内变化,从而使实现不可能。我们通过添加通用玩家必须遵守的线性约束系统来扩展此方法。因此,早期决策阶段中的存在变量和通用变量分配现在可以在以后限制可能的通用变量分配,反之亦然,从而导致具有决策相关不确定性的多阶段优化问题。我们提供结构和复杂性方面的新颖见解。

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