Empirical Priors in Polytomous Computerized Adaptive Tests: Risks and Rewards in Clinical Settings

Niek Frans*, Johan Braeken, Bernard P. Veldkamp, Muirne C. S. Paap

*Bijbehorende auteur voor dit werk

OnderzoeksoutputAcademicpeer review

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The use of empirical prior information about participants has been shown to substantially improve the efficiency of computerized adaptive tests (CATs) in educational settings. However, it is unclear how these results translate to clinical settings, where small item banks with highly informative polytomous items often lead to very short CATs. We explored the risks and rewards of using prior information in CAT in two simulation studies, rooted in applied clinical examples. In the first simulation, prior precision and bias in the prior location were manipulated independently. Our results show that a precise personalized prior can meaningfully increase CAT efficiency. However, this reward comes with the potential risk of overconfidence in wrong empirical information (i.e., using a precise severely biased prior), which can lead to unnecessarily long tests, or severely biased estimates. The latter risk can be mitigated by setting a minimum number of items that are to be administered during the CAT, or by setting a less precise prior; be it at the expense of canceling out any efficiency gains. The second simulation, with more realistic bias and precision combinations in the empirical prior, places the prevalence of the potential risks in context. With similar estimation bias, an empirical prior reduced CAT test length, compared to a standard normal prior, in 68% of cases, by a median of 20%; while test length increased in only 3% of cases. The use of prior information in CAT seems to be a feasible and simple method to reduce test burden for patients and clinical practitioners alike.

Originele taal-2English
Pagina's (van-tot)48-63
Aantal pagina's16
TijdschriftApplied Psychological Measurement
Nummer van het tijdschrift1
Vroegere onlinedatum30-sep.-2022
StatusPublished - jan.-2023

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