Current Volume | Browse
Vol. 25Vol. 24*Vol. 23Vol. 22*
Vol. 21Vol. 20*Vol. 19Vol. 18*
Vol. 17Vol. 16Vol. 15Vol. 14
Vol. 13*Vol. 12Vol. 11Vol. 10*
Vol. 9Vol. 8Vol. 7Vol. 6
Vol. 5Vol. 4Vol. 3Vol. 2
Vol. 1
* = Special Volume
| Search | RSS
Home | Instructions for Authors | LaTeX Style Files | Editorial Board

Authors: Søren Højsgaard, Ulrich Halekoh, Jun Yan
Title: [download]
(3292)
The R Package geepack for Generalized Estimating Equations
Reference: Vol. 15, Issue 2, Dec 2005
Submitted 2005-06-17, Accepted 2005-12-22
Type: Article
Abstract:

This paper describes the core features of the R package geepack, which implements the generalized estimating equations (GEE) approach for fitting marginal generalized linear models to clustered data. Clustered data arise in many applications such as longitudinal data and repeated measures. The GEE approach focuses on models for the mean of the correlated observations within clusters without fully specifying the joint distribution of the observations. It has been widely used in statistical practice. This paper illustrates the application of the GEE approach with geepack through an example of clustered binary
data.

Paper: [download]
(3292)
The R Package geepack for Generalized Estimating Equations
(application/pdf, 243.8 KB)
Resources: BibTeX | OAI
Current Volume | Browse
Vol. 25Vol. 24*Vol. 23Vol. 22*
Vol. 21Vol. 20*Vol. 19Vol. 18*
Vol. 17Vol. 16Vol. 15Vol. 14
Vol. 13*Vol. 12Vol. 11Vol. 10*
Vol. 9Vol. 8Vol. 7Vol. 6
Vol. 5Vol. 4Vol. 3Vol. 2
Vol. 1
* = Special Volume
| Search | RSS
Home | Instructions for Authors | LaTeX Style Files | Editorial Board