We consider multiobjective simulation optimization problems, where several conflicting objectives are optimized simultaneously, and can only be observed via stochastic simulation. The goal is to find or approximate a (discrete) set of Pareto-optimal solutions that reveal the essential trade-offs between the objectives, where optimality means that no objective can be improved without deteriorating the quality of any other objective. The noise in the observed performance may lead to two possible misclassification errors: solutions that are truly Pareto-optimal can be wrongly considered dominated, and solutions that are truly dominated can be wrongly considered Pareto-optimal. We propose a Bayesian multiobjective ranking and selection method to reduce the number of errors when identifying the solutions with the true best expected performance. We use stochastic kriging metamodels to build reliable predictive distributions of the objectives, and exploit this information in two efficient screening procedures and two novel sampling criteria. We use these in a sequential sampling algorithm to decide how to allocate samples. Experimental results show that the proposed method only requires a small fraction of samples compared to the standard allocation method, and it's competitive against the state-of-the-art, with the exploitation of the correlation structure being the dominant contributor to the improvement.
翻译:我们考虑的是多客观的模拟优化问题,即几个相互冲突的目标同时得到优化,并且只能通过随机模拟来观察。目标是找到或大致使用一套(分辨的)帕雷托最佳解决方案,这些解决方案揭示了目标之间的基本权衡,而优化意味着任何目标都无法在不降低任何其他目标质量的情况下得到改善。观察到的性能中的噪音可能导致两种可能的分类错误:真正帕雷托最佳的解决方案可以被错误地认为具有支配性,真正占主导地位的解决方案可以被错误地视为Pareto最佳。我们提出了一种巴伊西亚多客观的排名和选择方法,以减少在确定解决方案时出现错误的数量,并得出真正最佳的预期性能。我们利用随机的模型来建立可靠的目标预测分布,并在两个高效的筛选程序和两个新型取样标准中利用这些信息。我们用这些在顺序抽样算法中决定如何分配样本。实验结果显示,拟议的方法只需要与标准分配方法相比,一小部分样本,而比标准分配方法要少得多。我们建议采用一种减少误差的模型,而它又比得有竞争力地利用优势的模型来改进。