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Modeling Multiple Item Context Effects With Generalized Linear Mixed Models.


ABSTRACT: Item context effects refer to the impact of features of a test on an examinee's item responses. These effects cannot be explained by the abilities measured by the test. Investigations typically focus on only a single type of item context effects, such as item position effects, or mode effects, thereby ignoring the fact that different item context effects might operate simultaneously. In this study, two different types of context effects were modeled simultaneously drawing on data from an item calibration study of a multidimensional computerized test (N = 1,632) assessing student competencies in mathematics, science, and reading. We present a generalized linear mixed model (GLMM) parameterization of the multidimensional Rasch model including item position effects (distinguishing between within-block position effects and block position effects), domain order effects, and the interactions between them. Results show that both types of context effects played a role, and that the moderating effect of domain orders was very strong. The findings have direct consequences for planning and applying mixed domain assessment designs.

SUBMITTER: Rose N 

PROVIDER: S-EPMC6397884 | biostudies-literature | 2019

REPOSITORIES: biostudies-literature

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Modeling Multiple Item Context Effects With Generalized Linear Mixed Models.

Rose Norman N   Nagy Gabriel G   Nagengast Benjamin B   Frey Andreas A   Becker Michael M  

Frontiers in psychology 20190225


Item context effects refer to the impact of features of a test on an examinee's item responses. These effects cannot be explained by the abilities measured by the test. Investigations typically focus on only a single type of item context effects, such as item position effects, or mode effects, thereby ignoring the fact that different item context effects might operate simultaneously. In this study, two different types of context effects were modeled simultaneously drawing on data from an item ca  ...[more]

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