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Estimation of Slope for Linear Regression Model with Uncertain Prior Information and Student-t Error
Authors:Shahjahan Khan  A. K. Md. E. Saleh
Affiliation:1. Department of Mathematics and Computing, Australian Centre for Sustainable Catchments , University of Southern Queensland , Toowoomba , Queensland , Australia khans@usq.edu.au;3. School of Mathematics and Statistics, Carleton University , Ottawa , Canada
Abstract:This article considers estimation of the slope parameter of the linear regression model with Student-t errors in the presence of uncertain prior information on the value of the unknown slope. Incorporating uncertain non sample prior information with the sample data the unrestricted, restricted, preliminary test, and shrinkage estimators are defined. The performances of the estimators are compared based on the criteria of unbiasedness and mean squared errors. Both analytical and graphical methods are explored. Although none of the estimators is uniformly superior to the others, if the non sample information is close to its true value, the shrinkage estimator over performs the rest of the estimators.
Keywords:Bias  mean square error and relative efficiency  Incomplete beta ratio  Mixture distribution of normal and inverted gamma  Multiple regression model  Non central chi-square and F distributions  Preliminary test and shrinkage estimators  Student-t errors
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