Profile-based sensitivity in the design of experiments for parameter precision

Hana Sulieman
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Abstract

D-optimal experimental designs for precise parameter estimation are designs which minimize the determinant of the variance-covariance matrix of the parameter estimates based on the conventional parametric sensitivity coefficients. These coefficients are local measures of sensitivity defined by the first-order derivative of system model function with respect to parameters of interest. For nonlinear models, linear sensitivity information fail to gouge the sensitivity behavior of the model and hence, the resulting determinant of variance-covariance matrix may not give a true indication of the volume of the joint inference region for system parameters. In this article, we employ the profile-based sensitivity coefficients developed by Sulieman et.al. (2001, 2004)in the D-optimal experimental designs. Profile-based sensitivity coefficients account for both model nonlinearity and parameter estimate correlations and are, therefore, expected to yield better precision of parameter estimates when used in the optimization of particular experimental design criteria. Some characteristics of the profile-based designs and related computational aspects are discussed. Application of the new designs to nonlinear model case is also presented.
实验设计中基于廓形的灵敏度对参数精度的影响
用于精确参数估计的d -最优实验设计是基于常规参数敏感性系数的参数估计的方差-协方差矩阵的行列式最小化的设计。这些系数是灵敏度的局部度量,由系统模型函数对感兴趣的参数的一阶导数定义。对于非线性模型,线性灵敏度信息不能反映模型的灵敏度行为,由此得到的方差-协方差矩阵行列式不能真实反映系统参数联合推理区域的体积。在本文中,我们采用了Sulieman等人开发的基于剖面的灵敏度系数。(2001,2004)在d -最优实验设计中。基于剖面的灵敏度系数考虑了模型非线性和参数估计相关性,因此,当用于特定实验设计标准的优化时,期望能产生更好的参数估计精度。讨论了基于轮廓的设计的一些特点和相关的计算问题。文中还介绍了新设计在非线性模型实例中的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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