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Decision making in multiobjective optimization problems under uncertainty: balancing between robustness and quality

机译:不确定性下多目标优化问题的决策:鲁棒性和质量之间的平衡

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As an emerging research field, multiobjective robust optimization employs minmax robustness as the most commonly used concept. Light robustness is a concept in which a parameter, tolerable degradations, can be used to control the loss in the objective function values in the most typical scenario for gaining in robustness. In this paper, we develop a lightly robust interactive multiobjective optimization method, LiRoMo, to support a decision maker to find a most preferred lightly robust efficient solution with a good balance between robustness and the objective function values in the most typical scenario. In LiRoMo, we formulate a lightly robust subproblem utilizing an achievement scalarizing function which involves a reference point specified by the decision maker. With this subproblem, we compute lightly robust efficient solutions with respect to the decision maker's preferences. With LiRoMo, we support the decision maker in understanding the lightly robust efficient solutions with an augmented value path visualization. We use two measures price to be paid for robustness' and gain in robustness' to support the decision maker in considering the trade-offs between robustness and quality. As an example to illustrate the advantages of the method, we formulate and solve a simple investment portfolio optimization problem.
机译:作为一个新兴的研究领域,多目标鲁棒优化采用最小最大鲁棒性作为最常用的概念。光鲁棒性是一个概念,其中在可提高鲁棒性的最典型情况下,可以使用参数(可容忍的退化)来控制目标函数值的损失。在本文中,我们开发了一种轻度鲁棒的交互式多目标优化方法LiRoMo,以支持决策者找到最优选的轻度鲁棒的高效解决方案,并在最典型的情况下在鲁棒性和目标函数值之间取得良好的平衡。在LiRoMo中,我们利用成就标量函数来制定一个轻度鲁棒的子问题,该问题涉及决策者指定的参考点。有了这个子问题,我们就可以根据决策者的偏好来计算出健壮有效的解决方案。借助LiRoMo,我们支持决策者理解具有增强的价值路径可视化的轻巧高效解决方案。我们使用两种度量值来支付鲁棒性和鲁棒性,以支持决策者考虑鲁棒性和质量之间的权衡。举例说明该方法的优点,我们制定并解决了一个简单的投资组合优化问题。

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