Long-standing difficulties in estimating item parameters in item response theory (IRT) have been addressed recently with the application of Bayesian estimation models. The potential of these methods is enhanced by their availability in the BILOG computer program. This study investigated the ability of BILOG to recover known item parameters under varying conditions. Data were simulated for a two-parameter logistic IRT model under conditions of small numbers of examinees and items, and different variances for the prior distributions of discrimination parameters. The results suggest that for samples of at least 250 examinees and 15 items, BILOG accurately recovers known parameters using the default variance. The quality of the es...
Recently, Bayesian estimation of item response theory (IRT) models via Markov chain Monte Carlo meth...
Recently, Bayesian estimation of item response theory (IRT) models via Markov chain Monte Carlo meth...
Accurate item calibration in models of item response theory (IRT) requires rather large samples. For...
Long-standing difficulties in estimating item parameters in item response theory (IRT) have been add...
The effectiveness of a Bayesian approach to the estimation problem in item response models has been...
Item response theory (IRT) has great potential for solving many measurement problems. The success of...
The computer program PC-BILOG uses the estimated posterior θ distribution to establish the locatio...
Statistical properties of the ability level estimate ( ) in item response theory (IRT) were investig...
The focus of this study is the estimation procedures implemented in BILOG, a computer program. One p...
The focus of this paper is on the choice of suitable prior distributions for item parameters within ...
The focus of this paper is on the choice of suitable prior distributions for item parameters within ...
The focus of this paper is on the choice of suitable prior distributions for item parameters within ...
The effectiveness of a Bayesian approach to the es-timation problem in item response models has been...
The aim of this study was to examine the precision of item parameter estimation in different sample ...
Recently, Bayesian estimation of item response theory (IRT) models via Markov chain Monte Carlo meth...
Recently, Bayesian estimation of item response theory (IRT) models via Markov chain Monte Carlo meth...
Recently, Bayesian estimation of item response theory (IRT) models via Markov chain Monte Carlo meth...
Accurate item calibration in models of item response theory (IRT) requires rather large samples. For...
Long-standing difficulties in estimating item parameters in item response theory (IRT) have been add...
The effectiveness of a Bayesian approach to the estimation problem in item response models has been...
Item response theory (IRT) has great potential for solving many measurement problems. The success of...
The computer program PC-BILOG uses the estimated posterior θ distribution to establish the locatio...
Statistical properties of the ability level estimate ( ) in item response theory (IRT) were investig...
The focus of this study is the estimation procedures implemented in BILOG, a computer program. One p...
The focus of this paper is on the choice of suitable prior distributions for item parameters within ...
The focus of this paper is on the choice of suitable prior distributions for item parameters within ...
The focus of this paper is on the choice of suitable prior distributions for item parameters within ...
The effectiveness of a Bayesian approach to the es-timation problem in item response models has been...
The aim of this study was to examine the precision of item parameter estimation in different sample ...
Recently, Bayesian estimation of item response theory (IRT) models via Markov chain Monte Carlo meth...
Recently, Bayesian estimation of item response theory (IRT) models via Markov chain Monte Carlo meth...
Recently, Bayesian estimation of item response theory (IRT) models via Markov chain Monte Carlo meth...
Accurate item calibration in models of item response theory (IRT) requires rather large samples. For...