On an EM-based closed-form solution for 2 parameter IRT models
Methodology
2024-11-28 v1 Computation
Abstract
It is a well-known issue that in Item Response Theory models there is no closed-form for the maximum likelihood estimators of the item parameters. Parameter estimation is therefore typically achieved by means of numerical methods like gradient search. The present work has a two-fold aim: On the one hand, we revise the fundamental notions associated to the item parameter estimation in 2 parameter Item Response Theory models from the perspective of the complete-data likelihood. On the other hand, we argue that, within an Expectation-Maximization approach, a closed-form for discrimination and difficulty parameters can actually be obtained that simply corresponds to the Ordinary Least Square solution.
Cite
@article{arxiv.2411.18351,
title = {On an EM-based closed-form solution for 2 parameter IRT models},
author = {Stefano Noventa and Roberto Faleh and Augustin Kelava},
journal= {arXiv preprint arXiv:2411.18351},
year = {2024}
}
Comments
30, 6 figures, submitted to Psychometrika