| Literature DB >> 29795857 |
Chelsea Muth1, Karen L Bales1, Katie Hinde2, Nicole Maninger1, Sally P Mendoza1, Emilio Ferrer1.
Abstract
Unavoidable sample size issues beset psychological research that involves scarce populations or costly laboratory procedures. When incorporating longitudinal designs these samples are further reduced by traditional modeling techniques, which perform listwise deletion for any instance of missing data. Moreover, these techniques are limited in their capacity to accommodate alternative correlation structures that are common in repeated measures studies. Researchers require sound quantitative methods to work with limited but valuable measures without degrading their data sets. This article provides a brief tutorial and exploration of two alternative longitudinal modeling techniques, linear mixed effects models and generalized estimating equations, as applied to a repeated measures study (n = 12) of pairmate attachment and social stress in primates. Both techniques provide comparable results, but each model offers unique information that can be helpful when deciding the right analytic tool.Keywords: generalized estimating equations; linear mixed effects models; longitudinal data; repeated measures ANOVA; small sample
Year: 2015 PMID: 29795857 PMCID: PMC5965574 DOI: 10.1177/0013164415580432
Source DB: PubMed Journal: Educ Psychol Meas ISSN: 0013-1644 Impact factor: 2.821