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Linking Item Response Model Parameters

Wim J. Linden () and Michelle D. Barrett
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Wim J. Linden: CTB/McGraw-Hill Education
Michelle D. Barrett: CTB/McGraw-Hill Education

Psychometrika, 2016, vol. 81, issue 3, No 4, 650-673

Abstract: Abstract With a few exceptions, the problem of linking item response model parameters from different item calibrations has been conceptualized as an instance of the problem of test equating scores on different test forms. This paper argues, however, that the use of item response models does not require any test score equating. Instead, it involves the necessity of parameter linking due to a fundamental problem inherent in the formal nature of these models—their general lack of identifiability. More specifically, item response model parameters need to be linked to adjust for the different effects of the identifiability restrictions used in separate item calibrations. Our main theorems characterize the formal nature of these linking functions for monotone, continuous response models, derive their specific shapes for different parameterizations of the 3PL model, and show how to identify them from the parameter values of the common items or persons in different linking designs.

Keywords: 3PL response model; item calibration; linking design; linking function; parameter identifiability (search for similar items in EconPapers)
Date: 2016
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Citations: View citations in EconPapers (6)

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DOI: 10.1007/s11336-015-9469-6

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