@jepcastel

Analyzing longitudinal data with the linear mixed models procedure in SPSS.

. Evaluation & the health professions, 32 (3): 207-28 (September 2009)5341<m:linebreak></m:linebreak>JID: 7805992; 2009/08/13 aheadofprint; ppublish;<m:linebreak></m:linebreak>Mixed models; Dades longitudinals; SPSS.
DOI: 10.1177/0163278709338554

Abstract

Many applied researchers analyzing longitudinal data share a common misconception: that specialized statistical software is necessary to fit hierarchical linear models (also known as linear mixed models LMMs, or multilevel models) to longitudinal data sets. Although several specialized statistical software programs of high quality are available that allow researchers to fit these models to longitudinal data sets (e.g., HLM), rapid advances in general purpose statistical software packages have recently enabled analysts to fit these same models when using preferred packages that also enable other more common analyses. One of these general purpose statistical packages is SPSS, which includes a very flexible and powerful procedure for fitting LMMs to longitudinal data sets with continuous outcomes. This article aims to present readers with a practical discussion of how to analyze longitudinal data using the LMMs procedure in the SPSS statistical software package.

Links and resources

Tags

community