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MINMAX REGRET COMBINATORIAL OPTIMIZATION PROBLEMS: AN ALGORITHMIC PERSPECTIVE

机译:MINMAX REGRETE组合优化问题:一种算法视角

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Uncertainty in optimization is not a new ingredient. Diverse models considering uncertainty have been developed over the last 40 years. In our paper we essentially discuss a particular uncertainty model associated with combinatorial optimization problems, developed in the 90's and broadly studied in the past years. This approach named minmax regret (in particular our emphasis is on the robust deviation criteria) is different from the classical approach for handling uncertainty, stochastic approach, where uncertainty is modeled by assumed probability distributions over the space of all possible scenarios and the objective is to find a solution with good probabilistic performance. In the minmax regret (MMR) approach, the set of all possible scenarios is described deterministically, and the search is for a solution that performs reasonably well for all scenarios, i.e., that has the best worst-case performance. In this paper we discuss the computational complexity of some classic combinatorial optimization problems using MMR approach, analyze the design of several algorithms for these problems, suggest the study of some specific research problems in this attractive area, and also discuss some applications using this model.
机译:优化的不确定性不是一个新因素。在过去的40年中,已经开发出了多种考虑不确定性的模型。在本文中,我们从本质上讨论了与组合优化问题相关的特定不确定性模型,该模型在90年代开发并在过去的几年中得到了广泛研究。这种称为minmax后悔的方法(尤其是我们的重点是鲁棒偏差准则)不同于处理不确定性的经典方法(随机方法),在该方法中,不确定性是通过假设所有可能场景的空间上的概率分布来建模的。寻找具有良好概率性能的解决方案。在最小最大后悔(MMR)方法中,确定性地描述了所有可能场景的集合,并且搜索的是一种对于所有场景均表现良好的解决方案,即具有最佳的最坏情况性能。在本文中,我们讨论了使用MMR方法解决一些经典组合优化问题的计算复杂性,分析了针对这些问题的几种算法的设计,提出了对该有吸引力领域中一些特定研究问题的研究,并讨论了使用该模型的一些应用。

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