Random parameter models have been found to outperform fixed parameter models to estimate dose-response relationships with independent errors. A major restriction, however, is that the responses are assumed to be normally and symmetrically distributed. The purpose of this paper is to analyze Bayesian inference of random parameter response models in the case of independent responses with normal and skewed, heavy-tailed distributions by way of Monte Carlo simulation. Three types of Bayesian estimators are considered: one applying a normal, symmetrical prior distribution, a second applying a Skew-normal prior and, a third applying a Skew-t-distribution. We use the relative bias (RelBias) and Root Mean Squared Error (RMSE) as valuation criteria....
Linear mixed models were developed to handle clustered data and have been a topic of increasing inte...
Frequentist and likelihood methods of inference based on the multivariate skew-normal model encounte...
Spatial data are susceptible to covariates measured with errors. However, the errorprone covariates ...
Random parameter models have been found to outperform fixed parameter models to estimate dose-respon...
Random parameter models have been found to better predict the optimum dose of fertilization than fix...
Skew-normal/independent distributions are a class of asymmetric thick-tailed distributions that incl...
A study on Bayesian inference for the linear regression model is carried out in the case when the pr...
A study on Bayesian inference for the linear regression model is carried out in the case when the pr...
Random parameter models have been found to better determine the optimum dose of fertilizer than fixe...
<p>The normal and the <i>t</i> distribution are classical tools for building random effects regressi...
This paper considers the Bayesian analysis for estimating the parameters of nonlinear regression mod...
Item response theory (IRT) comprises a set of statistical models which are useful in many fields, es...
When the nature of a data set comes from a skew distribution, the use of usual Gaussian mixed effect...
peer reviewedSkew-symmetric distributions are a popular family of flexible distributions that conven...
Frequentist and likelihood methods of inference based on the multivariate skew-normal model encounte...
Linear mixed models were developed to handle clustered data and have been a topic of increasing inte...
Frequentist and likelihood methods of inference based on the multivariate skew-normal model encounte...
Spatial data are susceptible to covariates measured with errors. However, the errorprone covariates ...
Random parameter models have been found to outperform fixed parameter models to estimate dose-respon...
Random parameter models have been found to better predict the optimum dose of fertilization than fix...
Skew-normal/independent distributions are a class of asymmetric thick-tailed distributions that incl...
A study on Bayesian inference for the linear regression model is carried out in the case when the pr...
A study on Bayesian inference for the linear regression model is carried out in the case when the pr...
Random parameter models have been found to better determine the optimum dose of fertilizer than fixe...
<p>The normal and the <i>t</i> distribution are classical tools for building random effects regressi...
This paper considers the Bayesian analysis for estimating the parameters of nonlinear regression mod...
Item response theory (IRT) comprises a set of statistical models which are useful in many fields, es...
When the nature of a data set comes from a skew distribution, the use of usual Gaussian mixed effect...
peer reviewedSkew-symmetric distributions are a popular family of flexible distributions that conven...
Frequentist and likelihood methods of inference based on the multivariate skew-normal model encounte...
Linear mixed models were developed to handle clustered data and have been a topic of increasing inte...
Frequentist and likelihood methods of inference based on the multivariate skew-normal model encounte...
Spatial data are susceptible to covariates measured with errors. However, the errorprone covariates ...