Cauchy Regression and Confidence Intervals for the Slope
Document Type
Presentation Abstract
Presentation Date
4-22-2004
Abstract
This paper uses computer simulations to verify several features of the Greatest Deviation (GD) nonparametric correlation coefficient. First its asymptotic distribution is used in a simple linear regression setting where both variables are bivariate. Second, the distribution free property of GD is demonstrated by using both the bivariate normal and bivariate Cauchy distributions. Third, the robustness of the method is shown by estimating parameters in the Cauchy case. Fourth, a general geometric method is used to estimate a ratio of standard deviations used in the confidence interval. The methods in this paper are an outgrowth of general research on the use of nonparametric correlation coefficients in statistical estimations. The results in this paper are not specific to GD and are appropriate for other rank based correlation coefficients. Part of this far-reaching research on correlation coefficient methods is available on Professor Gideon's website.
Recommended Citation
Gideon, Rudy and Rothan, Adele, "Cauchy Regression and Confidence Intervals for the Slope" (2004). Colloquia of the Department of Mathematical Sciences. 164.
https://scholarworks.umt.edu/mathcolloquia/164
Additional Details
Thursday, 22 April 2004
4:10 p.m. in Jour 304