Estimating Transformations for Regression Via Additivity and Variance Stabilization
- 1 June 1988
- journal article
- research article
- Published by JSTOR in Journal of the American Statistical Association
- Vol. 83 (402) , 394
- https://doi.org/10.2307/2288855
Abstract
I propose a method for the nonparametric estimation of transformations for regression. It is much more flexible than the familiar Box-Cox procedure, allowing general smooth transformations of the variables, and is similar to the ACE (alternating conditional expectation) algorithm of Breiman and Friedman (1985). The ACE procedure uses scatterplot smoothers in an iterative fashion to find the maximally correlated transformations of the variables. Like ACE, my proposal can incorporate continuous, categorical, or periodic variables, or any mixture of these types. The method differs from ACE in that it uses a (nonparametric) variance-stabilizing transformation for the response variable. The technique seems to alleviate many of the anomalies that ACE suffers with regression data, including the inability to reproduce model transformations and sensitivity to the marginal distribution of the predictors. I provide several examples, including an analysis of the “brain and body weight” data and some data on telephone-call load. I also discuss the relationship of the proposed technique to the Box-Cox and ACE procedures. Efron's work on transformations provides some of the theoretical basis for the methodology.Keywords
This publication has 0 references indexed in Scilit: