Title of article :
Bootstrap Simulation Procedure Applied to the Selection of the Multiple Linear Regressions
Author/Authors :
Al-Marshadi, Ali Hussein King Abdulaziz University - Faculty of Science - Department of Statistics, Saudi Arabia
From page :
197
To page :
212
Abstract :
This article considers the analysis of multiple linearregressions (MLR) that is used frequently in practice. We proposenew approach could be used to guide the selection of the “true”regression model for different sample size in both cases of existingand not existing of multicollinearity, first-order autocorrelation, andheteroscedasticity. We used simulation study to compare eight modelselection criteria in terms of their ability to identify the “true” modelwith the help of the new approach. The comparison of the eight modelselection criteria was in terms of their percentage of number of timesthat they identify the “true” model with the help of the new approach.The simulation results indicate that overall, the new proposedapproach showed very good performance with all the eight modelselection criteria where the GMSEP, JP, and SP criteria provided thebest performance for all the cases. The main result of our article is thatwe recommend using the new proposed approach with GMSEP, or JP,or SP criteria as a standard procedure to identify the “true” model.
Keywords :
Multiple Linear Regression , Information Criteria , Bootstrap Procedure , MCB Procedure
Journal title :
Journal of King Abdulaziz University : Science
Journal title :
Journal of King Abdulaziz University : Science
Record number :
2699263
Link To Document :
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