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摘要

本文研究了一个随机分数型0-1规划,该规划的系数被假设为随机的,并遵循给定的分布。为了解决这样的问题,我们需要对系数的随机性进行抽样。然而,在许多情况下,样本量是有限的,这使得现有的方法(如样本平均近似法)很难给出很好的解。为了解决这个问题,我们探索了分数阶问题的分布鲁棒优化版本(DRO)。我们证明了DRO可以被重新表述为等效方差正则化版本,并可以进一步转化为一个混合整数二阶锥规划(MISOCP),一个现成的求解器(即CPLEX)可以处理它。然后,我们使用合成实例,将我们的鲁棒方法与传统的样本平均近似(SAA)进行计算结果比较。我们的结果表明,我们的方法在保护决策者免受不良情景的影响方面比SAA方法更有效。
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Distributionally Robust Fractional 0-1 Programming
This work concerns a stochastic fractional 0-1 program whose coefficients are assumed to be random and follow a given distribution. To solve such a problem, one would need to sample over the randomness of the coefficients. However, in many situations, the sample size would be limited, which makes it difficult for existing approaches (e.g, the sample average approximation approach) to give good solutions. To deal with this issue, we explore a distributionally robust optimization version (DRO) of the fractional problem. We show that the DRO can be reformulated as an equivalent variance regularization version and can be further transformed into a mixed-integer second order cone program (MISOCP), for which an off-the-shelf solver (i.e., CPLEX) can handle. We, then, perform computational results comparing our robust method against the conventional sample average approximation (SAA), using synthetic instances. Our results show that our approach is more effective than the SAA approach in protecting the decision-maker against bad scenarios.
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