Using Bayesian Decision Theory to Design a Computerized Mastery Test
- 1 December 1990
- journal article
- research article
- Published by SAGE Publications in Applied Psychological Measurement
- Vol. 14 (4) , 367-386
- https://doi.org/10.1177/014662169001400404
Abstract
A theoretical framework for mastery testing based on item response theory and Bayesian deci sion theory is described. The idea of sequential testing is developed, with the goal of providing shorter tests for individuals who have clearly mastered (or clearly not mastered) a given subject and longer tests for those individuals for whom the mastery decision is not as clear-cut. In a simulat ed application of the approach to a professional certification examination, it is shown that average test lengths can be reduced by half without sacrifi cing classification accuracy. Index terms:Keywords
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