TY - JOUR
T1 - Regime Switching Modeling of Substance Use
T2 - Time-Varying and Second-Order Markov Models and Individual Probability Plots
AU - Neale, Michael C.
AU - Clark, Shaunna L.
AU - Dolan, Conor V.
AU - Hunter, Michael D.
N1 - Funding Information:
This research was supported by National Institute on Drug Abuse grants DA-18673 and DA-26119.
Publisher Copyright:
Copyright © Taylor & Francis Group, LLC.
PY - 2016/3/3
Y1 - 2016/3/3
N2 - A linear latent growth curve mixture model with regime switching is extended in 2 ways. Previously, the matrix of first-order Markov switching probabilities was specified to be time-invariant, regardless of the pair of occasions being considered. The first extension, time-varying transitions, specifies different Markov transition matrices between each pair of occasions. The second extension is second-order time-invariant Markov transition probabilities, such that the probability of switching depends on the states at the 2 previous occasions. The models are implemented using the R package OpenMx, which facilitates data handling, parallel computation, and further model development. It also enables the extraction and display of relative likelihoods for every individual in the sample. The models are illustrated with previously published data on alcohol use observed on 4 occasions as part of the National Longitudinal Survey of Youth, and demonstrate improved fit to the data.
AB - A linear latent growth curve mixture model with regime switching is extended in 2 ways. Previously, the matrix of first-order Markov switching probabilities was specified to be time-invariant, regardless of the pair of occasions being considered. The first extension, time-varying transitions, specifies different Markov transition matrices between each pair of occasions. The second extension is second-order time-invariant Markov transition probabilities, such that the probability of switching depends on the states at the 2 previous occasions. The models are implemented using the R package OpenMx, which facilitates data handling, parallel computation, and further model development. It also enables the extraction and display of relative likelihoods for every individual in the sample. The models are illustrated with previously published data on alcohol use observed on 4 occasions as part of the National Longitudinal Survey of Youth, and demonstrate improved fit to the data.
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U2 - 10.1080/10705511.2014.979932
DO - 10.1080/10705511.2014.979932
M3 - Article
AN - SCOPUS:84957438362
SN - 1070-5511
VL - 23
SP - 221
EP - 233
JO - Structural Equation Modeling
JF - Structural Equation Modeling
IS - 2
ER -