LTCDM:Latent Transition Cognitive Diagnosis Model with Covariates
Implementation of the three-step approach of latent transition cognitive diagnosis model (CDM) with covariates.
This approach can be used to assess changes in attribute
mastery status and to evaluate the covariate effects on both
the initial states and transition probabilities over time using
latent logistic regression. Because stepwise approaches often
yield biased estimates, correction for classification error
probabilities (CEPs) is considered in this approach. The
three-step approach for latent transition CDM with covariates
involves the following steps: (1) fitting a CDM to the response
data without covariates at each time point separately, (2)
assigning examinees to latent states at each time point and
computing the associated CEPs, and (3) estimating the latent
transition CDM with the known CEPs and computing the regression
coefficients. The method was proposed in Liang et al. (2023)
<doi:10.3102/10769986231163320> and demonstrated using mental
health data in Liang et al. (in press; annotated R code and
data utilized in this example are available in Mendeley data)
<doi:10.17632/kpjp3gnwbt.1>.