A method of item factor analysis based on Thur-stone’s multiple-factor model and implemented by marginal maximum likelihood estimation and the EM algorithm is described. Statistical significance of suc-cessive factors added to the model is tested by the likelihood ratio criterion. Provisions for effects of guessing on multiple-choice items, and for omitted and not-reached items, are included. Bayes constraints on the factor loadings are found to be necessary to suppress Heywood cases. Numerous applications to simulated and real data are presented to substantiate the accuracy and practical utility of the method
estimation of item parameters, EM algorithm, item analysis, latent trait, dichotomous factor analysi...
AbstractThe traditional Bayesian factor analysis method is extended. In contrast to the case for pre...
Since binary data are ubiquitous in educational, psychological, and social research, methods for eff...
A method of item factor analysis based on Thur-stone’s multiple-factor model and implemented by marg...
A method of item factor analysis based on Thurstone’s multiple-factor model and implemented by mar...
bi-factor model, marginal maximum likelihood, EM algorithm, item analysis, dichotomous factor analys...
The full-information item factor analysis model proposed by Bock and Aitkin (1981) is described, an...
A full-information item factor analysis model for multidimensional polytomously scored item response...
factor analysis, item response theory, latent variables, EM algorithm, marginal likelihood estimatio...
This study investigated the item parameter recovery of two methods of factor analysis. The methods r...
In this paper the research of the true number of latent factors in exploratoty factor analysis model...
<p>In exploratory item factor analysis (IFA), researchers may use model fit statistics and commonly ...
A Metropolis–Hastings Robbins–Monro (MH-RM) algorithm for high-dimensional maximum marginal likeliho...
Factor analysis is one of the most popular methods of multivariate statistical analysis. This techni...
In psychological research, available data are often insufficient to estimate item factor analysis (I...
estimation of item parameters, EM algorithm, item analysis, latent trait, dichotomous factor analysi...
AbstractThe traditional Bayesian factor analysis method is extended. In contrast to the case for pre...
Since binary data are ubiquitous in educational, psychological, and social research, methods for eff...
A method of item factor analysis based on Thur-stone’s multiple-factor model and implemented by marg...
A method of item factor analysis based on Thurstone’s multiple-factor model and implemented by mar...
bi-factor model, marginal maximum likelihood, EM algorithm, item analysis, dichotomous factor analys...
The full-information item factor analysis model proposed by Bock and Aitkin (1981) is described, an...
A full-information item factor analysis model for multidimensional polytomously scored item response...
factor analysis, item response theory, latent variables, EM algorithm, marginal likelihood estimatio...
This study investigated the item parameter recovery of two methods of factor analysis. The methods r...
In this paper the research of the true number of latent factors in exploratoty factor analysis model...
<p>In exploratory item factor analysis (IFA), researchers may use model fit statistics and commonly ...
A Metropolis–Hastings Robbins–Monro (MH-RM) algorithm for high-dimensional maximum marginal likeliho...
Factor analysis is one of the most popular methods of multivariate statistical analysis. This techni...
In psychological research, available data are often insufficient to estimate item factor analysis (I...
estimation of item parameters, EM algorithm, item analysis, latent trait, dichotomous factor analysi...
AbstractThe traditional Bayesian factor analysis method is extended. In contrast to the case for pre...
Since binary data are ubiquitous in educational, psychological, and social research, methods for eff...