A novel approach for modeling multivariate longitudinal data in the presence of unobserved heterogeneity is proposed for the analysis of the Health and Retirement Study (HRS) data. Our proposal can be cast within the framework of linear mixed models with discrete individual random intercepts. This differs from the standard formulation in that the proposed Covariance Pattern Mixture Model (CPMM) does not require the usual local independence assumption; therefore, it is able to simultaneously model the heterogeneity, the association among the responses and the temporal dependence structure. We focus on the investigation of temporal patterns related to the cognitive functioning in retired American respondents, aiming to understand whether it c...
Experience sampling methodology is increasingly used in the social sciences to analyze individuals’ ...
latent variable model for the analysis of multivariate mixed longitudinal data is proposed. It exten...
Markov modeling presents an attractive analytical framework for researchers who are interested in st...
A novel approach for modeling multivariate longitudinal data in the presence of unobserved heterogen...
We propose a novel approach for modeling multivariate longitudinal data in the presence of unobserve...
When analyzing longitudinal data we need to balance our understanding of individual variability with...
Large, longitudinal, multivariate population surveys are increasingly common. Many analytic methods ...
Longitudinal studies play a prominent role in health, social, and behavioral sciences as well as in ...
Drop out is a typical issue in longitudinal studies. When the missingness is non-ignorable, inferenc...
In social sciences, studies are often based on questionnaires asking participants to express ordered...
The Aging, Demographics, and Memory Study is the first extensive study of cognitive impairment and d...
Longitudinal data have been collected in many medical studies. For this kind of data, observations w...
Dimensions of cognitive functioning are potentially important, but often neglected determinants of t...
Markov modeling presents an attractive analytical framework for researchers who are interested in st...
Mixed effect models are commonly used for longitudinal data from clinical studies where the between-...
Experience sampling methodology is increasingly used in the social sciences to analyze individuals’ ...
latent variable model for the analysis of multivariate mixed longitudinal data is proposed. It exten...
Markov modeling presents an attractive analytical framework for researchers who are interested in st...
A novel approach for modeling multivariate longitudinal data in the presence of unobserved heterogen...
We propose a novel approach for modeling multivariate longitudinal data in the presence of unobserve...
When analyzing longitudinal data we need to balance our understanding of individual variability with...
Large, longitudinal, multivariate population surveys are increasingly common. Many analytic methods ...
Longitudinal studies play a prominent role in health, social, and behavioral sciences as well as in ...
Drop out is a typical issue in longitudinal studies. When the missingness is non-ignorable, inferenc...
In social sciences, studies are often based on questionnaires asking participants to express ordered...
The Aging, Demographics, and Memory Study is the first extensive study of cognitive impairment and d...
Longitudinal data have been collected in many medical studies. For this kind of data, observations w...
Dimensions of cognitive functioning are potentially important, but often neglected determinants of t...
Markov modeling presents an attractive analytical framework for researchers who are interested in st...
Mixed effect models are commonly used for longitudinal data from clinical studies where the between-...
Experience sampling methodology is increasingly used in the social sciences to analyze individuals’ ...
latent variable model for the analysis of multivariate mixed longitudinal data is proposed. It exten...
Markov modeling presents an attractive analytical framework for researchers who are interested in st...