Variable Selection for Poisson Regression Model
Article Sidebar
Published
Nov 1, 2003
Main Article Content
Felix Famoye
Department of Mathematics, Central Michigan University
Daniel E. Rothe
Alpena Community College
Abstract
Poisson regression is useful in modeling count data. In a study with many independent variables, it is desirable to reduce the number of variables while maintaining a model that is useful for prediction. This article presents a variable selection technique for Poisson regression models. The data used is log-linear, but the methods could be adapted to other relationships. The model parameters are estimated by the method of maximum likelihood. The use of measures of goodness-of-fit to select appropriate variables is discussed. A forward selection algorithm is presented and illustrated on a numerical data set. This algorithm performs as well if not better than the method of transformation proposed by Nordberg (1982).
Article Details
Issue
Section
Articles