A Simulation Study of Bayesian Estimator for Seemingly Unrelated Regression under Different Distributional Assumptions

Ojo O. Oluwadare *

Department of Statistics, Federal University of Technology Akure, Nigeria.

Owonipa R. Oluremi

Department of Mathematical Sciences, Kogi State University, Anyigba, Nigeria.

Enesi O. Lateifat

Department of Mathematical Sciences, Kogi State University, Anyigba, Nigeria.

*Author to whom correspondence should be addressed.


Abstract

This paper presents Bayesian analysis of Seemingly Unrelated Regression (SUR) model. An independent prior for parameters was used. The Bayesian method was compared with classical method of estimation to know the most efficient estimator under different distributional assumptions through a simulation study. In order to facilitate comparison among these estimators, Mean Squared Error (MSE) was considered as a criterion. Furthermore, based on the simulation, it was deduced that MSE of the Bayesian estimator is smaller than all the classical methods of estimation for SUR model while Normal distribution was considered as an ideal distribution  in generation of disturbances in any simulation study.

Keywords: Bayesian, disturbance terms, independent prior, MSE, simulation.


How to Cite

Oluwadare, Ojo O., Owonipa R. Oluremi, and Enesi O. Lateifat. 2021. “A Simulation Study of Bayesian Estimator for Seemingly Unrelated Regression under Different Distributional Assumptions”. Asian Journal of Probability and Statistics 10 (4):1-8. https://doi.org/10.9734/ajpas/2020/v10i430251.

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