variationalDCM - Variational Bayesian Estimation for Diagnostic Classification
Models
Enables computationally efficient parameters-estimation by
variational Bayesian methods for various diagnostic
classification models (DCMs). DCMs are a class of discrete
latent variable models for classifying respondents into latent
classes that typically represent distinct combinations of
skills they possess. Recently, to meet the growing need of
large-scale diagnostic measurement in the field of educational,
psychological, and psychiatric measurements, variational
Bayesian inference has been developed as a computationally
efficient alternative to the Markov chain Monte Carlo methods,
e.g., Yamaguchi and Okada (2020a)
<doi:10.1007/s11336-020-09739-w>, Yamaguchi and Okada (2020b)
<doi:10.3102/1076998620911934>, Yamaguchi (2020)
<doi:10.1007/s41237-020-00104-w>, Oka and Okada (2023)
<doi:10.1007/s11336-022-09884-4>, and Yamaguchi and Martinez
(2024) <doi:10.1111/bmsp.12308>. To facilitate their
applications, 'variationalDCM' is developed to provide a
collection of recently-proposed variational Bayesian estimation
methods for various DCMs.