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Robustness analysis methodology for multi-objective combinatorial optimization problems and application to project selection

机译:多目标组合优化问题的鲁棒性分析方法及其在项目选择中的应用

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摘要

Multi-objective combinatorial optimization (MOCO) problems, apart from being notoriously difficult and complex to solve in reasonable computational time, they also exhibit high levels of instability in their results in case of uncertainty, which often deviate far from optimality. In this work we propose an integrated methodology to measure and analyze the robustness of MOCO problems, and more specifically multi-objective integer programming ones, given the imperfect knowledge of their parameters. We propose measures to assess the robustness of each specific Pareto optimal solution (POS), as well as the robustness of the entire Pareto set (PS) as a whole. The approach builds upon a synergy of Monte Carlo simulation and multi-objective optimization, using the augmented e-constraint method to generate the exact PS for the MOCO problems under examination. The usability of the proposed framework is justified through the identification of the most robust areas of the Pareto front, and the characterization of every POS with a robustness index. This index indicates a degree of certainty that a specific POS sustains its efficiency. The proposed methodology communicates in an illustrative way the robustness information to managers/decision makers and provides them with an additional supplement/ tool to guide and support their final decision. Numerical examples focusing on a multi-objective knapsack problem and an application to academic capital budgeting problem for project selection, are provided to verify the efficacy and added value of the methodology.
机译:多目标组合优化(MOCO)问题,除了在合理的计算时间内难以解决和复杂之外,在不确定性的情况下,其结果也表现出很高的不稳定性,通常会偏离最优性。在这项工作中,我们提出了一种综合的方法来测量和分析MOCO问题的鲁棒性,尤其是在给定参数知识不完善的情况下,多目标整数编程问题的鲁棒性。我们提出了一些措施来评估每个特定Pareto最优解决方案(POS)的健壮性,以及整个Pareto集(PS)整体的健壮性。该方法基于蒙特卡罗模拟和多目标优化的协同作用,使用增强的电子约束方法为正在检查的MOCO问题生成精确的PS。通过确定帕累托前沿的最鲁棒区域,并通过鲁棒性指数对每个POS进行表征,可以证明所提出框架的可用性。该指数表示特定POS维持其效率的确定性程度。所提出的方法以说明性方式将健壮性信息传达给经理/决策者,并为他们提供了附加的补充/工具,以指导和支持他们的最终决策。提供了针对多目标背包问题的数值示例,并应用于项目选择的学术资本预算问题,以验证该方法的有效性和附加值。

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