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Original Articles

Latent Regression in Loglinear Rasch Models

, , &
Pages 1295-1313 | Published online: 15 Feb 2007
 

Abstract

This article presents a framework for the use of latent variables as outcomes in regression analysis. Based on loglinear Rasch models where item parameters are known or estimated using conditional maximum likelihood a simple and fast estimation algorithm is proposed. The interpretation of regression parameters in the presence of random effects is discussed. A regression model based on a loglinear Rasch model is used to model general and specific group differences in an occupational health study.

Acknowledgments

The authors would like to thank Niels Keiding for valuable comments to a previous version of this paper. This research was supported by the Danish Research Academy.

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