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Quantile dispersion graphs for evaluating and comparing designs for logistic regression models

机译:用于评估和比较逻辑回归模型设计的分位数色散图

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Designs for fitting a generalized linear model depend on the unknown parameters of the model. The use of any design optimality criterion would therefore require some prior knowledge of the parameters. In this article, a graphical technique is proposed for comparing and evaluating designs for a logistic regression model. Quantiles of the scaled mean-squared error of prediction are obtained on concentric surfaces inside a region of interest, R. For a given design, these quantiles depend on the model's parameters. Plots of the maxima and minima of the quantiles, over a subset of the parameter space, produce the so-called quantile dispersion graphs (QDGs). The plots provide a comprehensive assessment of the overall prediction capability of the design within the region R. They also depict the dependence of the design on the model's parameters. The QDGs can therefore be conveniently used to compare several candidate designs. Two examples are presented to illustrate the proposed methodology.
机译:拟合广义线性模型的设计取决于模型的未知参数。因此,使用任何设计最优性准则都需要对参数有一些先验知识。在本文中,提出了一种图形技术,用于比较和评估逻辑回归模型的设计。在感兴趣区域R内的同心表面上获得了按比例缩放的预测均方误差的分位数。对于给定的设计,这些分位数取决于模型的参数。在参数空间的一个子集上,分位数的最大值和最小值的图产生了所谓的分位数色散图(QDG)。这些图提供了区域R内设计总体预测能力的全面评估。它们还描绘了设计对模型参数的依赖性。因此,可以将QDG方便地用于比较几种候选设计。给出两个例子来说明所提出的方法。

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