Current procedures for estimating compensatory multidimensional item response theory MIRT models using Markov chain Monte Carlo MCMC techniques are inadequate in that they do not directly model the interrelationship between latent traits. This limits the implementation of the model in various applications and further prevents the development of other types of IRT models that offer advantages not realized in existing models. In view of this, an MCMC algorithm is proposed for MIRT models so that the actual latent structure is directly modeled. It is demonstrated that the algorithm performs well in modeling parameters as well as intertrait correlations and that the MIRT model can be used to explore the relative importance of a latent trait in ...
The fully Bayesian estimation via the use of Markov chain Monte Carlo (MCMC) techniques has become p...
Item response theory (IRT) models play a critical role in psychometric studies for the design and an...
A Bayesian procedure to estimate the three-parameter normal ogive model and a generalization to a mo...
Multidimensional item response models have been developed to incorporate a general trait and several...
Unidimensional item response theory (IRT) models are useful when each item is designed to measure so...
Item response theory (IRT) is widely used in assessment and evaluation research to explain how parti...
Item response theory (IRT) has gained an increasing popularity in large-scale educational and psycho...
The aim of the thesis is to propose a Bayesian estimation through Markov chain Monte Carlo of multid...
A Fortran 77 subroutine is provided for implementing the Gibbs sampling procedure to a multiunidimen...
Modeling the interaction between persons and items at the item level for binary response data, item ...
Unidimensional item response theory (IRT) models are useful when each item is de-signed to measure s...
Bayes estimates, full-information factor analysis, Gibbs sampler, item response theory, Markov chain...
The Mixture Item Response Theory (MixIRT) can be used to identify latent classes of examinees in dat...
In this article, atwo-level regression model is imposed on the ability parameters in an item respons...
In this article, a two-level regression model is imposed on the ability parameters in an item respon...
The fully Bayesian estimation via the use of Markov chain Monte Carlo (MCMC) techniques has become p...
Item response theory (IRT) models play a critical role in psychometric studies for the design and an...
A Bayesian procedure to estimate the three-parameter normal ogive model and a generalization to a mo...
Multidimensional item response models have been developed to incorporate a general trait and several...
Unidimensional item response theory (IRT) models are useful when each item is designed to measure so...
Item response theory (IRT) is widely used in assessment and evaluation research to explain how parti...
Item response theory (IRT) has gained an increasing popularity in large-scale educational and psycho...
The aim of the thesis is to propose a Bayesian estimation through Markov chain Monte Carlo of multid...
A Fortran 77 subroutine is provided for implementing the Gibbs sampling procedure to a multiunidimen...
Modeling the interaction between persons and items at the item level for binary response data, item ...
Unidimensional item response theory (IRT) models are useful when each item is de-signed to measure s...
Bayes estimates, full-information factor analysis, Gibbs sampler, item response theory, Markov chain...
The Mixture Item Response Theory (MixIRT) can be used to identify latent classes of examinees in dat...
In this article, atwo-level regression model is imposed on the ability parameters in an item respons...
In this article, a two-level regression model is imposed on the ability parameters in an item respon...
The fully Bayesian estimation via the use of Markov chain Monte Carlo (MCMC) techniques has become p...
Item response theory (IRT) models play a critical role in psychometric studies for the design and an...
A Bayesian procedure to estimate the three-parameter normal ogive model and a generalization to a mo...