On the Performance of Semi- and Nonparametric Item Response Functions in Computer Adaptive Tests
Author(s) -
Carl F. Falk,
Leah Feuerstahler
Publication year - 2021
Publication title -
educational and psychological measurement
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.819
H-Index - 95
eISSN - 1552-3888
pISSN - 0013-1644
DOI - 10.1177/00131644211014261
Subject(s) - computerized adaptive testing , nonparametric statistics , item response theory , monotonic function , parametric statistics , selection (genetic algorithm) , statistics , smoothing , polynomial , kernel (algebra) , mathematics , function (biology) , differential item functioning , sample (material) , computer science , econometrics , psychometrics , artificial intelligence , mathematical analysis , chemistry , chromatography , combinatorics , evolutionary biology , biology
Large-scale assessments often use a computer adaptive test (CAT) for selection of items and for scoring respondents. Such tests often assume a parametric form for the relationship between item responses and the underlying construct. Although semi- and nonparametric response functions could be used, there is scant research on their performance in a CAT. In this work, we compare parametric response functions versus those estimated using kernel smoothing and a logistic function of a monotonic polynomial. Monotonic polynomial items can be used with traditional CAT item selection algorithms that use analytical derivatives. We compared these approaches in CAT simulations with a variety of item selection algorithms. Our simulations also varied the features of the calibration and item pool: sample size, the presence of missing data, and the percentage of nonstandard items. In general, the results support the use of semi- and nonparametric item response functions in a CAT.
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