We consider likelihood-based inference from multivariate regression models with independent Student-t errors. Some very intruiging pitfalls of both Bayesian and classical methods on the basis of point observations are uncovered. Bayesian inference may be precluded as a consequence of the coarse nature of the data. Global maximization of the likelihood function is a vacuous exercise since the likelihood function is unbounded as we tend to the boundary of the parameter space. A Bayesian analysis on the basis of set observations is proposed and illustrated by several examples
A statistical model is characterized by a family of probabilty distribution functions. All inference...
A statistical model is characterized by a family of probabilty distribution functions. All inference...
A statistical model is characterized by a family of probabilty distribution functions. All inference...
We consider likelihood-based inference from multivariate regression models with independent Student-...
We develop a Bayesian analysis based on two different Jeffreys priors for the Student-t regression m...
We consider likelihood and Bayesian inferences for seemingly unrelated (linear) regressions for the ...
This article takes up methods for Bayesian inference in a linear model in which the disturbances are...
To model multivariate, possibly heavy-tailed data, we compare the multivariate normal model (N) with...
[Abstract]: Prediction distribution is a basis for predictive inferences applied in many real world ...
A description of computationally efficient methods for the Bayesian analysis of Student-t seemingly ...
[Abstract]: This thesis investigates the prediction distributions of future response(s), conditi...
In this note estimation and prediction is considered for a (linear or nonlinear) regression model wi...
We develop a Bayesian analysis based on two different Jeffreys priors for the Student-t regres-sion ...
[Abstract]: This thesis investigates the prediction distributions of future response(s), conditi...
I The flexibility of Student-t processes (TPs) over Gaussian processes (GPs) robustifies inference i...
A statistical model is characterized by a family of probabilty distribution functions. All inference...
A statistical model is characterized by a family of probabilty distribution functions. All inference...
A statistical model is characterized by a family of probabilty distribution functions. All inference...
We consider likelihood-based inference from multivariate regression models with independent Student-...
We develop a Bayesian analysis based on two different Jeffreys priors for the Student-t regression m...
We consider likelihood and Bayesian inferences for seemingly unrelated (linear) regressions for the ...
This article takes up methods for Bayesian inference in a linear model in which the disturbances are...
To model multivariate, possibly heavy-tailed data, we compare the multivariate normal model (N) with...
[Abstract]: Prediction distribution is a basis for predictive inferences applied in many real world ...
A description of computationally efficient methods for the Bayesian analysis of Student-t seemingly ...
[Abstract]: This thesis investigates the prediction distributions of future response(s), conditi...
In this note estimation and prediction is considered for a (linear or nonlinear) regression model wi...
We develop a Bayesian analysis based on two different Jeffreys priors for the Student-t regres-sion ...
[Abstract]: This thesis investigates the prediction distributions of future response(s), conditi...
I The flexibility of Student-t processes (TPs) over Gaussian processes (GPs) robustifies inference i...
A statistical model is characterized by a family of probabilty distribution functions. All inference...
A statistical model is characterized by a family of probabilty distribution functions. All inference...
A statistical model is characterized by a family of probabilty distribution functions. All inference...