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arXiv (Cornell University)
AutoIRT: Calibrating Item Response Theory Models with Automated Machine Learning
September 2024 • James Sharpnack, Phoebe Mulcaire, Klinton Bicknell, Geoffrey T. LaFlair, Kevin Yancey
Item response theory (IRT) is a class of interpretable factor models that are widely used in computerized adaptive tests (CATs), such as language proficiency tests. Traditionally, these are fit using parametric mixed effects models on the probability of a test taker getting the correct answer to a test item (i.e., question). Neural net extensions of these models, such as BertIRT, require specialized architectures and parameter tuning. We propose a multistage fitting procedure that is compatible with out-of-the-box…
Computer Science
Artificial Intelligence
Machine Learning
Mathematics
Statistics
Psychometrics