Title of article :
Bayesian D-optimal design for a quadratic beta regression model with a known nuisance parameter considering prior uniform and normal distributions for parameters
Author/Authors :
Jafari, Habib Department of Statistics - Faculty of Science - Razi University, Kermanshah, Iran , Pirmohammadi, Shima Department of Statistics - Faculty of Mathematics and Statistics - Isfahan University, Isfahan, Iran , Alboghbeish, Fatemeh Department of Statistics - Faculty of Science - Razi University, Kermanshah, Iran
Abstract :
One of the practical and important issue in statistics is the fitness of regression
models. Optimal design is a way to obtain suitable fitness of this type of models.
In addition, we need to use some criteria for attaining optimal design in regression
models. The D-optimality criterion is one of the most famous criteria which is used
here. An appropriate method to obtain the optimal designs is the Bayesian method
that need to the prior distribution for the parameters of the model (coefficient regression).
In this paper, by using Bayesian methods, D-optimal designs are obtained for
quadratic beta regression model. Also, uniform and normal distributions are considered
as the prior distributions and obtained results are analyzed.
Keywords :
Bayesian D-optimal design , Beta regression model , D-optimality criterion , Fisher information matrix
Journal title :
Journal of Statistical Modelling: Theory and Applications (JSMTA)