Nonparametric tests for longitudinal data

Date

2009-12-16T14:23:03Z

Journal Title

Journal ISSN

Volume Title

Publisher

Kansas State University

Abstract

The purpose of this report is to numerically compare several tests that are applicable to longitudinal data when the experiment contains a large number of treatments or experimental conditions. Such data are increasingly common as technology advances. Of interest is to evaluate if there is any significant main effect of treatment or time, and their interactions. Traditional methods such as linear mixed-effects models (LME), generalized estimating equations (GEE), Wilks' lambda, Hotelling-Lawley, and Pillai's multivariate tests were developed under either parametric distributional assumptions or the assumption of large number of replications. A few recent tests, such as Zhang (2008), Bathke & Harrar (2008), and Bathke & Harrar (2008) were specially developed for the setting of large number of treatments with possibly small replications. In this report, I will present some numerical studies regarding these tests. Performance of these tests will be presented for data generated from several distributions.

Description

Keywords

Longitudinal data, Nonparametric tests

Graduation Month

December

Degree

Master of Science

Department

Department of Statistics

Major Professor

Haiyan Wang

Date

2009

Type

Report

Citation