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MODA 4 -- Advances in Model--Oriented Data Analysis

Bayesian Designs for Approximate Normality

Publication ,  Chapter
Clyde, MA
1995

In many experimental design problems, the primary interest is in estimating functions of the parameters and a design is selected according to some optimality criterion. The assumption that parameter estimates are approximately normally distributed is often used to find optimal designs, as well as simplify data analysis. How well this approximation holds for small to moderate sample sizes depends on the intrinsic and parameter-effects curvatures. These measures depend on both the parameterization used as well as the experimental design. For a particular parameterization of interest, these curvatures can be reduced by the choice of the experimental design. A Bayesian approach is taken to find designs that optimize the primary design criterion subject to satisfying constraints based on these curvature measures, with the goal of improving normal approximations. The constrained designs depend on the sample size, but as the sample size increases the constraints are satisfied. A nonlinear regression example is used to illustrate the approach.

Duke Scholars

DOI

ISBN

3-7908-0864-4

Publication Date

1995

Start / End Page

25 / 35

Publisher

Physica-Verlag
 

Citation

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Clyde, M. A. (1995). Bayesian Designs for Approximate Normality. In C. P. Kitsos & W. G. Muller (Eds.), MODA 4 -- Advances in Model--Oriented Data Analysis (pp. 25–35). Physica-Verlag. https://doi.org/10.1007/978-3-662-12516-8
Clyde, M. A. “Bayesian Designs for Approximate Normality.” In MODA 4 -- Advances in Model--Oriented Data Analysis, edited by C. P. Kitsos and W. G. Muller, 25–35. Physica-Verlag, 1995. https://doi.org/10.1007/978-3-662-12516-8.
Clyde MA. Bayesian Designs for Approximate Normality. In: Kitsos CP, Muller WG, editors. MODA 4 -- Advances in Model--Oriented Data Analysis. Physica-Verlag; 1995. p. 25–35.
Clyde, M. A. “Bayesian Designs for Approximate Normality.” MODA 4 -- Advances in Model--Oriented Data Analysis, edited by C. P. Kitsos and W. G. Muller, Physica-Verlag, 1995, pp. 25–35. Manual, doi:10.1007/978-3-662-12516-8.
Clyde MA. Bayesian Designs for Approximate Normality. In: Kitsos CP, Muller WG, editors. MODA 4 -- Advances in Model--Oriented Data Analysis. Physica-Verlag; 1995. p. 25–35.
Journal cover image

DOI

ISBN

3-7908-0864-4

Publication Date

1995

Start / End Page

25 / 35

Publisher

Physica-Verlag