Randomized Minmax Regret for Combinatorial Optimization Under Uncertainty
نویسندگان
چکیده
The minmax regret problem for combinatorial optimization under uncertainty can be viewed as a zero-sum game played between an optimizing player and an adversary, where the optimizing player selects a solution and the adversary selects costs with the intention of maximizing the regret of the player. Existing minmax regret models consider only deterministic solutions/strategies, and minmax regret versions of most polynomial solvable problems are NP-hard. In this paper, we consider a randomized model where the optimizing player selects a probability distribution (corresponding to a mixed strategy) over solutions and the adversary selects costs with knowledge of the player’s distribution, but not its realization. We show that under this randomized model, the minmax regret version of any polynomial solvable combinatorial problem becomes polynomial solvable. This holds true for both the interval and discrete scenario representations of uncertainty. We also show that the maximum expected regret value under the randomized model is upper bounded by the regret under the deterministic model.
منابع مشابه
[11] A. Ben-Tal and A. Nemirovski. Robust solutions of uncertain linear
[4] Igor Averbakh. Minmax regret solutions for minmax optimization problems with uncertainty. [5] Igor Averbakh. On the complexity of a class of combinatorial optimization problems with uncertainty. [7] Igor Averbakh and Oded Berman. Minimax regret p-center location on a network with demand uncertainty. [8] Igor Averbakh and Oded Berman. Minmax p-traveling salesman location problems on a tree.
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