The Bayesian KL-optimality criterion is useful for discriminating between any two statistical models in the presence of prior information. If the rival models are not nested then, depending on which model is true, two different Kullback\u2013Leibler distances may be defined. The Bayesian KL-optimality criterion is a convex combination of the expected values of these two possible Kullback\u2013Leibler distances between the competing models. These expectations are taken over the prior distributions of the parameters and the weights of the convex combination are given by the prior probabilities of the models. Concavity of the Bayesian KL-optimality criterion is proved, thus classical results of Optimal Design Theory can be applied. A standardi...
In this paper, we argue that some of the prior parameter distributions used in the literature for th...
In this paper, we argue that some of the prior parameter distributions used in the literature for th...
In the context of nonlinear regression models, a new class of optimum design criteria is developed a...
Bayesian optimal designs for estimation and prediction in linear regression models are considered. F...
Some new properties and computational tools for finding KL-optimum designs are provided in this pape...
Some new properties and computational tools for finding KL-optimum designs are provided in this pape...
In this paper some new properties and computational tools for finding KL-optimum designs are provid...
In this paper some new properties and computational tools for finding KL-optimum designs are provid...
Typically "T"-optimality is used to obtain optimal designs to discriminate between homoscedastic mod...
In this paper, a new compound optimality criterion will be introduced. This criterion called PDKL-op...
The emphasis in this work is on derivation of optimal Bayes inferences and designs in relatively une...
In this paper, we argue that some of the prior parameter distributions used in the literature for th...
Among optimality criteria adopted to select best experimental designs to discriminate between differ...
In this paper, we argue that some of the prior parameter distributions used in the literature for th...
In this paper, we argue that some of the prior parameter distributions used in the literature for th...
In this paper, we argue that some of the prior parameter distributions used in the literature for th...
In this paper, we argue that some of the prior parameter distributions used in the literature for th...
In the context of nonlinear regression models, a new class of optimum design criteria is developed a...
Bayesian optimal designs for estimation and prediction in linear regression models are considered. F...
Some new properties and computational tools for finding KL-optimum designs are provided in this pape...
Some new properties and computational tools for finding KL-optimum designs are provided in this pape...
In this paper some new properties and computational tools for finding KL-optimum designs are provid...
In this paper some new properties and computational tools for finding KL-optimum designs are provid...
Typically "T"-optimality is used to obtain optimal designs to discriminate between homoscedastic mod...
In this paper, a new compound optimality criterion will be introduced. This criterion called PDKL-op...
The emphasis in this work is on derivation of optimal Bayes inferences and designs in relatively une...
In this paper, we argue that some of the prior parameter distributions used in the literature for th...
Among optimality criteria adopted to select best experimental designs to discriminate between differ...
In this paper, we argue that some of the prior parameter distributions used in the literature for th...
In this paper, we argue that some of the prior parameter distributions used in the literature for th...
In this paper, we argue that some of the prior parameter distributions used in the literature for th...
In this paper, we argue that some of the prior parameter distributions used in the literature for th...
In the context of nonlinear regression models, a new class of optimum design criteria is developed a...