A Multidimensional Partially Compensatory Response Time Model on Basis of the Log-Normal Distribution

Author:

Ranger Jochen1,König Christoph2,Domingue Benjamin W.3,Kuhn Jörg-Tobias4,Frey Andreas2ORCID

Affiliation:

1. Martin-Luther-University Halle-Wittenberg

2. Goethe University Frankfurt

3. Stanford Graduate School of Education

4. TU Dortmund University

Abstract

In the existing multidimensional extensions of the log-normal response time (LNRT) model, the log response times are decomposed into a linear combination of several latent traits. These models are fully compensatory as low levels on traits can be counterbalanced by high levels on other traits. We propose an alternative multidimensional extension of the LNRT model by assuming that the response times can be decomposed into two response time components. Each response time component is generated by a one-dimensional LNRT model with a different latent trait. As the response time components—but not the traits—are related additively, the model is partially compensatory. In a simulation study, we investigate the recovery of the model’s parameters. We also investigate whether the fully and the partially compensatory LNRT model can be distinguished empirically. Findings suggest that parameter recovery is good and that the two models can be distinctly identified under certain conditions. The utility of the model in practice is demonstrated with an empirical application. In the empirical application, the partially compensatory model fits better than the fully compensatory model.

Publisher

American Educational Research Association (AERA)

Subject

Social Sciences (miscellaneous),Education

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