| Literature DB >> 25013354 |
Nisha C Gottfredson1, Daniel J Bauer2, Scott A Baldwin3.
Abstract
In longitudinal research, interest often centers on individual trajectories of change over time. When there is missing data, a concern is whether data are systematically missing as a function of the individual trajectories. Such a missing data process, termed random coefficient-dependent missingness, is statistically non-ignorable and can bias parameter estimates obtained from conventional growth models that assume missing data are missing at random. This paper describes a shared-parameter mixture model (SPMM) for testing the sensitivity of growth model parameter estimates to a random coefficient-dependent missingness mechanism. Simulations show that the SPMM recovers trajectory estimates as well as or better than a standard growth model across a range of missing data conditions. The paper concludes with practical advice for longitudinal data analysts.Entities:
Keywords: Growth Mixture Models; Growth Models; Longitudinal Data; Missing Data; Shared Parameter Mixture Models
Year: 2014 PMID: 25013354 PMCID: PMC4084916 DOI: 10.1080/10705511.2014.882666
Source DB: PubMed Journal: Struct Equ Modeling ISSN: 1070-5511 Impact factor: 6.125