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首页> 外文期刊>Optimization: A Journal of Mathematical Programming and Operations Research >Optimization of generalized desirability functions under model uncertainty
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Optimization of generalized desirability functions under model uncertainty

机译:模型不确定性下广义期望函数的优化

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摘要

Desirability functions are increasingly used in multi-criteria decision-making which we support by modern optimization. It is necessary to formulate desirability functions to obtain a generalized version with a piecewise max type-structure for optimizing them in different areas of mathematics, operational research, management science and engineering by nonsmooth optimization approaches. This optimization problem needs to be robustified as regression models employed by the desirability functions are typically built under lack of knowledge about the underlying model. In this paper, we contribute to the theory of desirability functions by our robustification approach. We present how generalized semi-infinite programming and disjunctive optimization can be used for this purpose. We show our findings on a numerical example. The robustification of the optimization problem eventually aims at variance reduction in the optimal solutions.
机译:期望功能越来越多地用于多标准决策,我们通过现代优化支持。 有必要制定可期望的功能,以获得具有分段最大类型结构的通用版本,用于通过非现象,操作研究,管理科学和工程的不同领域优化它们,通过非光滑优化方法。 这种优化问题需要强化,因为期望函数所采用的回归模型通常在缺乏关于底层模型的知识下构建。 在本文中,我们通过我们的稳健方法促进了可取性功能的理论。 我们介绍了广泛性的半无限编程和分解优化如何用于此目的。 我们在数字示例中展示了我们的研究结果。 优化问题的稳定化最终旨在减少最佳解决方案。

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