View source: R/TVC.mxModel_helper.R
getTVC.mxModel | R Documentation |
This function builds up an object of mxModel for a latent growth curve model or latent change score model with user-specified functional form (including whether intrinsically nonlinear), time-varying covariate, and with time-invariant covariates (if any).
getTVC.mxModel(
dat,
t_var,
y_var,
curveFun,
intrinsic,
records,
y_model,
TVC,
decompose,
growth_TIC,
starts
)
dat |
A wide-format data frame, with each row corresponding to a unique ID. It contains the observed variables with
repeated measurements (for the longitudinal outcome and time-varying covariates), occasions, and time-invariant covariates
(TICs) if any. It takes the value passed from |
t_var |
A string specifying the prefix of the column names corresponding to the time variable at each study wave.
It takes the value passed from |
y_var |
A string specifying the prefix of the column names corresponding to the outcome variable at each study wave.
It takes the value passed from |
curveFun |
A string specifying the functional form of the growth curve. Supported options for |
intrinsic |
A logical flag indicating whether to build an intrinsically nonlinear longitudinal model. It takes the
value passed from |
records |
A numeric vector specifying the indices of the observed study waves. It takes the value passed from
|
y_model |
A string specifying how to fit the longitudinal outcome. Supported values are |
TVC |
A string specifying the prefix of the column names corresponding to the time-varying covariate at each study wave.
It takes the value passed from |
decompose |
An integer specifying the decomposition option for temporal states. Supported values include |
growth_TIC |
A string or character vector specifying the column name(s) of time-invariant covariate(s) that account for the
variability of growth factors, if any. It takes the value passed from |
starts |
A list of initial values for the parameters, either takes the value passed from |
A pre-optimized mxModel for a latent growth curve model or a latent change score model with a time-varying covariate and time-invariant covariates (if any).
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