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首页> 外文期刊>European Journal of Operational Research >Robust optimization for interactive multiobjective programming with imprecise information applied to R&D project portfolio selection
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Robust optimization for interactive multiobjective programming with imprecise information applied to R&D project portfolio selection

机译:鲁棒的交互式多目标编程优化,其中不精确的信息应用于研发项目组合的选择

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A multiobjective binary integer programming model for R&D project portfolio selection with competing objectives is developed when problem coefficients in both objective functions and constraints are uncertain. Robust optimization is used in dealing with uncertainty while an interactive procedure is used in making tradeoffs among the multiple objectives. Robust nondominated solutions are generated by solving the linearized counterpart of the robust augmented weighted Tchebycheff programs. A decision maker's most preferred solution is identified in the interactive robust weighted Tchebycheff procedure by progressively eliciting and incorporating the decision maker's preference information into the solution process. An example is presented to illustrate the solution approach and performance. The developed approach can also be applied to general multiobjective mixed integer programming problems.
机译:当目标函数和约束的问题系数都不确定时,建立了具有竞争目标的R&D项目组合选择的多目标二进制整数规划模型。鲁棒性优化用于处理不确定性,而交互过程用于在多个目标之间进行权衡。通过求解鲁棒增强加权Tchebycheff程序的线性对应项,可以生成鲁棒的非支配解。通过逐步引出决策者的偏好信息并将其纳入解决过程,可以在交互式鲁棒加权Tchebycheff过程中确定决策者的最佳解决方案。给出一个示例来说明解决方案的方法和性能。所开发的方法还可以应用于一般的多目标混合整数规划问题。

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