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Evaluation of combinatorial optimisation algorithms for c-optimal experimental designs with correlated observations

机译:具有相关观测值的c最优实验设计的组合优化算法评估

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Abstract We show how combinatorial optimisation algorithms can be applied to the problem of identifying c-optimal experimental designs when there may be correlation between and within experimental units and evaluate the performance of relevant algorithms. We assume the data generating process is a generalised linear mixed model and show that the c-optimal design criterion is a monotone supermodular function amenable to a set of simple minimisation algorithms. We evaluate the performance of three relevant algorithms: the local search, the greedy search, and the reverse greedy search. We show that the local and reverse greedy searches provide comparable performance with the worst design outputs having variance <10documentclass12pt{minimal} usepackage{amsmath} usepackage{wasysym} usepackage{amsfonts} usepackage{amssymb} usepackage{amsbsy} usepackage{mathrsfs} usepackage{upgreek} setlength{oddsidemargin}{-69pt} begin{document}$$<10$$end{document} greater than the best design, across a range of covariance structures. We show that these algorithms perform as well or better than multiplicative methods that generate weights to place on experimental units. We extend these algorithms to identifying modle-robust c-optimal designs.
机译:摘要 当实验单元之间和实验单元内部可能存在相关性时,如何将组合优化算法应用于识别c最优实验设计的问题,并评估相关算法的性能。我们假设数据生成过程是一个广义线性混合模型,并表明c-最优设计准则是一个单调超模函数,适用于一组简单的最小化算法。我们评估了三种相关算法的性能:本地搜索、贪婪搜索和反向贪婪搜索。我们表明,局部和反向贪婪搜索提供了相当的性能,最差的设计输出具有方差<10%documentclass[12pt]{minimal} usepackage{amsmath} usepackage{wasysym} usepackage{amsfonts} usepackage{amssymb} usepackage{amsbsy} usepackage{mathrsfs} usepackage{upgreek} setlength{oddsidemargin}{-69pt} begin{document}$$<10%$$end{document} 比最佳设计大,跨越一系列协方差结构。我们表明,这些算法的性能与乘法方法一样好或更好,乘法方法生成要放置在实验单元上的权重。我们将这些算法扩展到识别模态鲁棒的c-最优设计。

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