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Lagrangean Decomposition for Mean-Variance Combinatorial Optimization

机译:拉格朗日分解法用于均方差组合优化

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We address robust versions of combinatorial optimization problems, focusing on the uncorrelated ellipsoidal uncertainty case, which corresponds to so-called mean-variance optimization. We present a branch and bound-algorithm for such problems that uses lower bounds obtained from Lagrangean decomposition. This approach allows to separate the uncertainty aspect in the objective function from the combinatorial structure of the feasible set. We devise a combinatorial algorithm for solving the unrestricted binary subproblem efficiently, while the underlying combinatorial optimization problem can be addressed by any black box-solver. An experimental evaluation shows that our approach clearly outperforms other methods for mean-variance optimization when applied to robust shortest path problems and to risk-averse capital budgeting problems arising in portfolio optimization.
机译:我们着眼于组合优化问题的健壮版本,着重于不相关的椭圆不确定性情况,这对应于所谓的均值方差优化。我们针对此类问题提出了分支定界算法,该算法使用从拉格朗日分解法获得的下限。这种方法允许将目标函数中的不确定性方面与可行集的组合结构分开。我们设计了一种组合算法,可以有效地解决无限制的二进制子问题,而底层的组合优化问题可以由任何黑盒求解器解决。实验评估表明,将本方法应用于稳健的最短路径问题和投资组合优化中产生的规避风险的资本预算问题时,其均值方差优化方法明显优于其他方法。

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