{"title":"最小-最大-最小稳健优化的近似保证和目标不确定性下的[math]-适应性","authors":"Jannis Kurtz","doi":"10.1137/23m1595084","DOIUrl":null,"url":null,"abstract":"SIAM Journal on Optimization, Volume 34, Issue 2, Page 2121-2149, June 2024. <br/> Abstract. In this work we investigate the min-max-min robust optimization problem and the k-adaptability robust optimization problem for binary problems with uncertain costs. The idea of the first approach is to calculate a set of k feasible solutions which are worst-case optimal if in each possible scenario the best of the k solutions is implemented. It is known that the min-max-min robust problem can be solved efficiently if k is at least the dimension of the problem, while it is theoretically and computationally hard if k is small. However, nothing is known about the intermediate case, i.e., k lies between one and the dimension of the problem. We approach this open question and present an approximation algorithm which achieves good problem-specific approximation guarantees for the cases where k is close to or a fraction of the dimension. The derived bounds can be used to show that the min-max-min robust problem is solvable in oracle-polynomial time under certain conditions even if k is smaller than the dimension. We extend the previous results to the robust k-adaptability problem. As a consequence we can provide bounds on the number of necessary second-stage policies to approximate the exact two-stage robust problem. We derive an approximation algorithm for the k-adaptability problem which has similar guarantees as for the min-max-min problem. Finally, we test both algorithms on knapsack and shortest path problems. 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引用次数: 0
摘要
SIAM 优化期刊》,第 34 卷第 2 期,第 2121-2149 页,2024 年 6 月。 摘要在这项工作中,我们研究了具有不确定成本的二元问题的最小-最大-最小鲁棒优化问题和 k-适应性鲁棒优化问题。第一种方法的思路是计算一组 k 个可行解,如果在每种可能的情况下都实施了 k 个解中的最佳解,则这些解都是最坏情况下的最优解。众所周知,如果 k 至少是问题的维度,则最小-最大-最小稳健问题可以高效求解,而如果 k 较小,则理论上和计算上都很困难。然而,对于中间情况,即 k 介于 1 和问题维度之间,我们却一无所知。我们从这一悬而未决的问题入手,提出了一种近似算法,它能在 k 接近维数或维数的几分之一的情况下,实现针对具体问题的良好近似保证。推导出的边界可以用来证明,即使 k 小于维数,最小-最大-最小鲁棒问题在某些条件下也可以在oracle-polynomial 时间内求解。我们将前面的结果扩展到鲁棒 k 适应性问题。因此,我们可以提供近似精确两阶段鲁棒问题所需的第二阶段策略数量的边界。我们为 k 适应性问题推导出了一种近似算法,该算法具有与最小-最大-最小问题类似的保证。最后,我们在knapsack和最短路径问题上测试了这两种算法。实验结果表明,这两种算法都能在几秒钟内计算出最优差距相对较小的解决方案。
Approximation Guarantees for Min-Max-Min Robust Optimization and [math]-Adaptability Under Objective Uncertainty
SIAM Journal on Optimization, Volume 34, Issue 2, Page 2121-2149, June 2024. Abstract. In this work we investigate the min-max-min robust optimization problem and the k-adaptability robust optimization problem for binary problems with uncertain costs. The idea of the first approach is to calculate a set of k feasible solutions which are worst-case optimal if in each possible scenario the best of the k solutions is implemented. It is known that the min-max-min robust problem can be solved efficiently if k is at least the dimension of the problem, while it is theoretically and computationally hard if k is small. However, nothing is known about the intermediate case, i.e., k lies between one and the dimension of the problem. We approach this open question and present an approximation algorithm which achieves good problem-specific approximation guarantees for the cases where k is close to or a fraction of the dimension. The derived bounds can be used to show that the min-max-min robust problem is solvable in oracle-polynomial time under certain conditions even if k is smaller than the dimension. We extend the previous results to the robust k-adaptability problem. As a consequence we can provide bounds on the number of necessary second-stage policies to approximate the exact two-stage robust problem. We derive an approximation algorithm for the k-adaptability problem which has similar guarantees as for the min-max-min problem. Finally, we test both algorithms on knapsack and shortest path problems. The experiments show that both algorithms calculate solutions with relatively small optimality gap in seconds.
期刊介绍:
The SIAM Journal on Optimization contains research articles on the theory and practice of optimization. The areas addressed include linear and quadratic programming, convex programming, nonlinear programming, complementarity problems, stochastic optimization, combinatorial optimization, integer programming, and convex, nonsmooth and variational analysis. Contributions may emphasize optimization theory, algorithms, software, computational practice, applications, or the links between these subjects.