On the Conditional and Unconditional Type I Error Rates and Power of Tests in Linear Models with Heteroscedastic Errors
Article Sidebar
Published
Nov 1, 2018
Main Article Content
Patrick J. Rosopa
Clemson University, Clemson, SC
Alice M. Brawley
Gettysburg College, Gettysburg
Theresa P. Atkinson
Allstate, Dallas
Stephen A. Robertson
Clemson University, Clemson
Abstract
Preliminary tests for homoscedasticity may be unnecessary in general linear models. Based on Monte Carlo simulations, results suggest that when testing for differences between independent slopes, the unconditional use of weighted least squares regression and HC4 regression performed the best across a wide range of conditions.
Article Details
Issue
Section
Articles