A new approach to computerized adaptive testing
Author(s) -
L.S. Kuravsky,
S.L. Artemenkov,
G.A. Yuryev,
Elena L. Grigorenko
Publication year - 2017
Publication title -
experimental psychology (russia)
Language(s) - English
Resource type - Journals
eISSN - 2311-7036
pISSN - 2072-7593
DOI - 10.17759/exppsy.2017100303
Subject(s) - computerized adaptive testing , polytomous rasch model , rasch model , computer science , item response theory , markov chain , identification (biology) , extension (predicate logic) , machine learning , artificial intelligence , data mining , psychometrics , mathematics , statistics , botany , biology , programming language
A new approach to computerized adaptive testing is presented on the basis of discrete-state discretetime Markov processes. This approach is based on an extension of the G. Rasch model used in the Item Response Theory (IRT) and has decisive advantages over the adaptive IRT testing. This approach has a number of competitive advantages: takes into account all the observed history of performing test items that includes the distribution of successful and unsuccessful item solutions; incorporates time spent on performing test items; forecasts results in the future behavior of the subjects; allows for self-learning and changing subject abilities during a testing procedure; contains easily available model identification procedure based on simply accessible observation data. Markov processes and the adaptive transitions between the items remain hidden for the subjects who have access to the items only and do not know all the intrinsic mathematical details of a testing procedure. The developed model of adaptive testing is easily generalized for the case of polytomous items and multidimensional items and model structures.
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