Logistic Growth Modeling with Markov Chain Monte Carlo Estimation
Article Sidebar
Published
May 1, 2019
Main Article Content
Jaehwa Choi
The George Washington University, Washington, DC
Jinsong Chen
Sun Yen-Sat University, Guangzhou, China
Jeffrey R. Harring
University of Maryland, College Park, MD, USA
Abstract
A new growth modeling approach is proposed to can fit inherently nonlinear (i.e., logistic) function without constraint nor reparameterization. A simulation study is employed to investigate the feasibility and performance of a Markov chain Monte Carlo method within Bayesian estimation framework to estimate a fully random version of a logistic growth curve model under manipulated conditions such as the number and timing of measurement occasions and sample sizes.
Article Details
Issue
Section
Articles