Robustness properties of minimally-supported Bayesian D-optimal designs for heteroscedastic models
نویسندگان
چکیده
Bayesian D-optimal designs supported on a xed number of points were found by Dette and Wong (1998) for estimating parameters in a polynomial model when the error variance depends exponentially on the explanatory variable. This work provides optimal designs under a broader class of error variance structures and investigates the robustness properties of these designs to model and prior distribution assumptions. A comparison of the performance of the optimal designs relative to the popular uniform designs is also given. In addition, our results suggest that Bayesian D-optimal designs suported on a xed number of points are more likely to be optimal among all designs if the prior distribution is symmetric and is concentrated around its mean.
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تاریخ انتشار 2012