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On the Finite Optimal Convergence of Logic-Based Benders' Decomposition in Solving 0-1 Min-Max Regret Optimization Problems with Interval Costs

机译:求解带间隔成本的0-1最小-最大后悔优化问题中基于逻辑的Benders分解的有限最优收敛性

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This paper addresses a class of problems under interval data uncertainty composed of min-max regret versions of classical 0-1 optimization problems with interval costs. We refer to them as interval 0-1 min-max regret problems. The state-of-the-art exact algorithms for this class of problems work by solving a corresponding mixed integer linear programming formulation in a Benders' decomposition fashion. Each of the possibly exponentially many Benders' cuts is separated on the fly through the resolution of an instance of the classical 0-1 optimization problem counterpart. Since these separation subproblems may be NP-hard, not all of them can be modeled by means of linear programming, unless P = NP. In these cases, the convergence of the aforementioned algorithms are not guaranteed in a straightforward manner. In fact, to the best of our knowledge, their finite convergence has not been explicitly proved for any interval 0-1 min-max regret problem. In this work, we formally describe these algorithms through the definition of a logic-based Benders' decomposition framework and prove their convergence to an optimal solution in a finite number of iterations. As this framework is applicable to any interval 0-1 min-max regret problem, its finite optimal convergence also holds in the cases where the separation subproblems are NP-hard.
机译:本文讨论了区间数据不确定性下的一类问题,该问题由具有区间成本的经典0-1优化问题的最小-最大后悔版本组成。我们称它们为间隔0-1 min-max后悔问题。此类最先进的精确算法通过以Benders分解方式求解相应的混合整数线性规划公式来工作。通过可能的经典0-1优化问题副本实例的解析,可以动态地分隔每个可能成倍增长的Benders剪切。由于这些分离子问题可能是NP问题,因此,除非P = NP,否则并非所有的分离问题都可以通过线性编程来建模。在这些情况下,不能以直接的方式保证上述算法的收敛性。实际上,据我们所知,对于任何0-1 min-max后悔问题,它们的有限收敛性都没有得到明确证明。在这项工作中,我们通过定义基于逻辑的Benders分解框架来正式描述这些算法,并在有限的迭代次数中证明它们收敛到最优解。由于此框架适用于0-1 min-max间隔的任何后悔问题,因此在分离子问题为NP-hard的情况下,它的有限最优收敛性也成立。

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