When the aim of an experiment is the estimation of a Generalised Linear Model (GLM), standard designs from linear model theory may prove inadequate. This paper describes a flexible approach for finding designs for experiments to estimate GLMs through the use of D-optimality and a simulated annealing algorithm. A variety of uncertainties in the model can be incorporated into the design search, including the form of the linear predictor, through use of a robust design selection criterion and a postulated model space. New methods appropriate for screening experiments and the incorporation of correlations between possible model parameters are described through examples. An updating formula for Doptimality under a GLM is presented which improves the computational efficiency of the search.Robust designs for binary data: applications of simulated annealingSouthampton Statistical Sciences Research Institute, University of Southampton, Southampton, UK
AbstractWhen the aim of an experiment is the estimation of a Generalised Linear Model (GLM), standard designs from linear model theory may prove inadequate. This paper describes a flexible approach for finding designs for experiments to estimate GLMs through the use of D-optimality and a simulated annealing algorithm. A variety of uncertainties in the model can be incorporated into the design search, including the form of the linear predictor, through use of a robust design selection criterion and a postulated model space. New methods appropriate for screening experiments and the incorporation of correlations between possible model parameters are described through examples. An updating formula for D-optimality under a GLM is presented which improves the computational efficiency of the search.