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A semi-infinite programming based algorithm for finding minimax optimal designs for nonlinear models

机译:基于半无限编程的非线性模型寻找极大极小最优设计的算法

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Minimax optimal experimental designs are notoriously difficult to study largely because the optimality criterion is not differentiable and there is no effective algorithm for generating them. We apply semi-infinite programming (SIP) to solve minimax design problems for nonlinear models in a systematic way using a discretization based strategy and solvers from the General Algebraic Modeling System (GAMS). Using popular models from the biological sciences, we show our approach produces minimax optimal designs that coincide with the few theoretical and numerical optimal designs in the literature. We also show our method can be readily modified to find standardized maximin optimal designs and minimax optimal designs for more complicated problems, such as when the ranges of plausible values for the model parameters are dependent and we want to find a design to minimize the maximal inefficiency of estimates for the model parameters.
机译:众所周知,Minimax最优实验设计很难研究,因为最优准则不可微且没有有效的算法来生成它们。我们应用半无限编程(SIP),以基于离散化的策略和通用代数建模系统(GAMS)的求解器,系统地解决非线性模型的极大极小设计问题。使用来自生物科学的流行模型,我们证明了我们的方法产生的最小最大最优设计与文献中的少数理论和数值最优设计相吻合。我们还表明,对于更复杂的问题,例如当模型参数的合理值范围相互依赖并且我们希望找到一种可以最大程度地降低最大效率的设计时,可以轻松地修改我们的方法以找到标准化的maximin最优设计和minimax最优设计。模型参数的估计值。

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