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Computing c-optimal experimental designs using the simplex method of linear programming

机译:使用线性规划的单纯形法计算c最优实验设计

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摘要

An experimental design is said to be c-optimal if it minimizes the variance of the best linear unbiased estimator of , where c is a given vector of coefficients, and β is an unknown vector parameter of the model in consideration. For a linear regression model with uncorrelated observations and a finite experimental domain, the problem of approximate c-optimality is equivalent to a specific linear programming problem. The most important consequence of the linear programming characterization is that it is possible to base the calculation of c-optimal designs on well-understood computational methods. In particular, the simplex algorithm of linear programming applied to the problem of c-optimality reduces to an exchange algorithm with different pivot rules corresponding to specific techniques of selecting design points for exchange. The algorithm can also be applied to “difficult” problems with singular c-optimal designs and relatively high dimension of β. Moreover, the algorithm facilitates identification of the set of all the points that can support some c-optimal design. As an example, optimal designs for estimating the individual parameters of the trigonometric regression on a partial circle are computed.
机译:如果将最小化的最佳线性无偏估计量的方差最小化,则认为实验设计是c最优的,其中c是系数的给定向量,而β是所考虑模型的未知向量参数。对于具有不相关观测值和有限实验域的线性回归模型,近似c最优性问题等同于特定的线性规划问题。线性规划表征的最重要结果是,有可能将c最佳设计的计算基于公认的计算方法。特别地,应用于c-最优性问题的线性规划的单纯形算法简化为具有与对应的选择设计点以进行交换的特定技术相对应的不同枢轴规则的交换算法。该算法还可以应用于奇异的c最优设计和相对较大的β维数的“困难”问题。此外,该算法有助于识别可以支持某些c最佳设计的所有点的集合。作为示例,计算了用于估计部分圆上的三角回归的各个参数的最佳设计。

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