22–25 Jul 2025
EAM2025
Atlantic/Canary timezone

Statistical foundations of person parameter estimation in the Thurstonian IRT model for forced-choice and pairwise comparison designs

23 Jul 2025, 10:15
15m
Faculty of Social Sciences and Communication. (The Pyramid)/12 - Room (Faculty of Social Sciences and Communication. (The Pyramid))

Faculty of Social Sciences and Communication. (The Pyramid)/12 - Room

Faculty of Social Sciences and Communication. (The Pyramid)

30
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Speaker

Safir Yousfi (German Federal Employment Agency)

Description

The statistical foundations of person parameter estimation for the multivariate Thurstonian item response theory (TIRT) model of pairwise comparison and forced-choice (FC) ranking data are elaborated, and several misconceptions in IRT and TIRT are addressed. It is shown that directional information (i.e. multivariate information as defined by Reckase & Kinley, 1991; Applied Psychological Measurement, 15, 361) is not suited to quantify the precision of the estimates unless the Fisher information matrix is diagonal. The asymptotic covariance can be quantified by the inverse Fisher information matrix if the genuine likelihood is used and by the inverse Godambe information for independence likelihood estimation that results from ignoring within-block dependencies of pairwise comparisons. Analytical expressions are provided for the genuine likelihood and the Fisher information matrix for a generalized TIRT model that comprises binary pairwise comparison and ranking designs, which enables maximum likelihood estimation (MLE) and Bayesian estimation (maximum a posteriori probability with normal and Jeffreys prior) of person parameters. The bias of the MLE is quantified, and methods of bias prevention and bias correction are introduced. The correct marginal likelihood of graded pairwise comparisons is provided that might be used for person parameter estimation based on the independence likelihood.

Oral presentation Statistical foundations of person parameter estimation in the Thurstonian IRT model for forced-choice and pairwise comparison designs
Author Safir Yousfi
Affiliation Federal Employment Agency
Keywords TIRT, likelihood, information, estimation, bias

Primary author

Safir Yousfi (German Federal Employment Agency)

Presentation materials