Login / Signup

On the Use of Mixed Markov Models for Intensive Longitudinal Data.

S de Haan-RietdijkPeter KuppensC S BergemanL B SheeberN B AllenE L Hamaker
Published in: Multivariate behavioral research (2017)
Markov modeling presents an attractive analytical framework for researchers who are interested in state-switching processes occurring within a person, dyad, family, group, or other system over time. Markov modeling is flexible and can be used with various types of data to study observed or latent state-switching processes, and can include subject-specific random effects to account for heterogeneity. We focus on the application of mixed Markov models to intensive longitudinal data sets in psychology, which are becoming ever more common and provide a rich description of each subject's process. We examine how specifications of a Markov model change when continuous random effect distributions are included, and how mixed Markov models can be used in the intensive longitudinal research context. Advantages of Bayesian estimation are discussed and the approach is illustrated by two empirical applications.
Keyphrases
  • electronic health record
  • big data
  • cross sectional
  • mass spectrometry
  • machine learning
  • artificial intelligence
  • liquid chromatography