Masoudi Ehsan, Holling Heinz, Wong Weng Kee, Kim Seongho
Department of Psychology, University of Münster, Fliednerstr. 21, 48149 Germany.
Department of Biostatistics, UCLA Fielding School of Public Health, Los Angeles, CA 90095-1772, USA.
R J. 2022 Sep;14(3):20-45. doi: 10.32614/rj-2022-043. Epub 2022 Dec 19.
Optimal design ideas are increasingly used in different disciplines to rein in experimental costs. Given a nonlinear statistical model and a design criterion, optimal designs determine the number of experimental points to observe the responses, the design points and the number of replications at each design point. Currently, there are very few free and effective computing tools for finding different types of optimal designs for a general nonlinear model, especially when the criterion is not differentiable. We introduce an R package ICAOD to find various types of optimal designs and they include locally, minimax and Bayesian optimal designs for different nonlinear statistical models. Our main computational tool is a novel metaheuristic algorithm called imperialist competitive algorithm (ICA) and inspired by socio-political behavior of humans and colonialism. We demonstrate its capability and effectiveness using several applications. The package also includes several theory-based tools to assess optimality of a generated design when the criterion is a convex function of the design.
最优设计理念在不同学科中越来越多地被用于控制实验成本。给定一个非线性统计模型和一个设计准则,最优设计可确定用于观测响应的实验点数量、设计点以及每个设计点的重复次数。目前,对于一般非线性模型,用于寻找不同类型最优设计的免费且有效的计算工具非常少,尤其是当准则不可微时。我们引入了一个R包ICAOD来寻找各种类型的最优设计,包括针对不同非线性统计模型的局部、极小极大和贝叶斯最优设计。我们的主要计算工具是一种名为帝国主义竞争算法(ICA)的新型元启发式算法,它受人类社会政治行为和殖民主义的启发。我们通过几个应用案例展示了它的能力和有效性。当准则是设计的凸函数时,该包还包括几个基于理论的工具来评估生成设计的最优性。