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首页> 外文期刊>Journal of Global Optimization >Cooperative multiobjective optimization with bounds on objective functions
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Cooperative multiobjective optimization with bounds on objective functions

机译:基于客观功能的合作多目标优化

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When solving large-scale multiobjective optimization problems, solvers can get stuck because of memory and/or time limitations. In such cases, one is left with no information on the distance to the best feasible solution, found before the optimization process has stopped, to the true Pareto optimal solution. In this work, we show how to provide such information. To this aim we make use of the concept of lower shells and upper shells, developed in our earlier works. No specific assumptions about the problems to be solved are made. We illustrate the proposed approach on biobjective multidimensional knapsack problems derived from single-objective multidimensional knapsack problems in the Beasley OR Library. We address cases when a top-class commercial mixed-integer linear solver fails to provide Pareto optimal solutions attempted to be derived by scalarization.
机译:在解决大规模的多目标优化问题时,由于内存和/或时间限制,求解器可以被卡住。在这种情况下,没有关于优化过程停止之前的最佳可行解决方案的距离的信息,以真正的帕累托最佳解决方案发现。在这项工作中,我们展示了如何提供此类信息。为此目的,我们利用了我们之前的作品中开发的下壳和上壳的概念。没有关于要解决的问题的具体假设是制造的。我们说明了在Beasley或图书馆中源自单目标多维背包问题的生物起多维背包问题的提出方法。我们在顶级商用混合整数线性求解器无法提供帕累托最佳解决方案时解决了案例,试图通过Scalarization派生。

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