The Bayesian design approach accounts for uncertainty of the parameter values on which optimal design depends, but Bayesian designs themselves depend on the choice of a prior distribution for the parameter values. This article investigates Bayesian D-optimal designs for two-parameter logistic models, using numerical search. We show three things: (1) a prior with large variance leads to a design that remains highly efficient under other priors, (2) uniform and normal priors lead to equally efficient designs, and (3) designs with four or five equidistant equally weighted design points are highly efficient relative to the Bayesian D-optimal designs
In this paper we develop a sequential procedure to approach the D-optimal design given a logistic re...
In medicine and health sciences mixed effects models are often used to study time-structured data. O...
In medicine and health sciences mixed effects models are often used to study time-structured data. O...
The Bayesian design approach accounts for uncertainty of the parameter values on which optimal desig...
The Bayesian design approach accounts for uncertainty of the parameter values on which optimal desig...
Bayesian optimal designs for binary longitudinal responses analyzed with mixed logistic regression d...
Bayesian optimal designs for binary longitudinal responses analyzed with mixed logistic regression d...
Bayesian optimal designs for binary longitudinal responses analyzed with mixed logistic regression d...
For Bayesian D-optimal design, we define a singular prior distribution to be a prior distribution su...
Alphabetic optimal design theory assumes that the model for which the optimal design is derived is u...
Bayesian optimal designs for estimation and prediction in linear regression models are considered. F...
In medicine and health sciences mixed effects models are often used to study time-structured data. O...
In medicine and health sciences mixed effects models are often used to study time-structured data. O...
In medicine and health sciences mixed effects models are often used to study time-structured data. O...
In medicine and health sciences mixed effects models are often used to study time-structured data. O...
In this paper we develop a sequential procedure to approach the D-optimal design given a logistic re...
In medicine and health sciences mixed effects models are often used to study time-structured data. O...
In medicine and health sciences mixed effects models are often used to study time-structured data. O...
The Bayesian design approach accounts for uncertainty of the parameter values on which optimal desig...
The Bayesian design approach accounts for uncertainty of the parameter values on which optimal desig...
Bayesian optimal designs for binary longitudinal responses analyzed with mixed logistic regression d...
Bayesian optimal designs for binary longitudinal responses analyzed with mixed logistic regression d...
Bayesian optimal designs for binary longitudinal responses analyzed with mixed logistic regression d...
For Bayesian D-optimal design, we define a singular prior distribution to be a prior distribution su...
Alphabetic optimal design theory assumes that the model for which the optimal design is derived is u...
Bayesian optimal designs for estimation and prediction in linear regression models are considered. F...
In medicine and health sciences mixed effects models are often used to study time-structured data. O...
In medicine and health sciences mixed effects models are often used to study time-structured data. O...
In medicine and health sciences mixed effects models are often used to study time-structured data. O...
In medicine and health sciences mixed effects models are often used to study time-structured data. O...
In this paper we develop a sequential procedure to approach the D-optimal design given a logistic re...
In medicine and health sciences mixed effects models are often used to study time-structured data. O...
In medicine and health sciences mixed effects models are often used to study time-structured data. O...