Free Content Local measures of association: Estimating the derivative of the regression line

Author: Wilcox, Rand R.1

Source: British Journal of Mathematical and Statistical Psychology, Volume 60, Number 1, May 2007 , pp. 107-117(11)

Abstract:

A local measure of association that allows both heteroscedasticity and a non-linear association was developed during the 1990s. The basic goal is to measure the strength of the association between X and Y, given X, when Y = θ(X) + τ(X)ε for some unknown functions θ(X) and τ(X). Application of this method requires the estimation of the derivative of θ(X). The focus in this paper is on four alternatives to a very slight modification of the method used by Doksum et al. when estimating this derivative. The main result is that in simulations, a certain robust analogue of their method dominates in terms of mean squared error, even under normality. The bias of the method is found to be small but a little larger than the bias associated with the method used by Doksum et al. The method is based in part on bootstrap bagging followed by a lowess smooth.

Document Type: Research article

DOI: 10.1348/000711006X98305

Affiliations: 1: Department of Psychology, University of Southern California, USA

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