Mixed 0-1 Linear Programs Under Objective Uncertainty: A Completely Positive Representation

K. Natarajan, C. Teo, Zhichao Zheng
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引用次数: 71

Abstract

In this paper, we analyze mixed 0-1 linear programs under objective uncertainty. The mean vector and the second-moment matrix of the nonnegative objective coefficients are assumed to be known, but the exact form of the distribution is unknown. Our main result shows that computing a tight upper bound on the expected value of a mixed 0-1 linear program in maximization form with random objective is a completely positive program. This naturally leads to semidefinite programming relaxations that are solvable in polynomial time but provide weaker bounds. The result can be extended to deal with uncertainty in the moments and more complicated objective functions. Examples from order statistics and project networks highlight the applications of the model. Our belief is that the model will open an interesting direction for future research in discrete and linear optimization under uncertainty.
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目标不确定性下0-1混合线性规划的完全正表示
本文研究了客观不确定性条件下的混合0-1线性规划问题。假设非负客观系数的平均向量和二阶矩矩阵是已知的,但其确切分布形式是未知的。我们的主要结果表明,具有随机目标的最大化形式的混合0-1线性规划的期望值的紧上界计算是一个完全正的规划。这自然会导致半定规划松弛,它在多项式时间内可解,但提供较弱的界。该结果可推广到处理矩的不确定性和更复杂的目标函数。来自订单统计和项目网络的例子突出了该模型的应用。我们相信,该模型将为不确定性下的离散和线性优化的未来研究开辟一个有趣的方向。
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