Log-linear Rasch-type Models for Repeated Categorical Data with a Psychological Application

Reinhold Hatzinger, Walter Katzenbeisser

Publication: Working/Discussion PaperWU Working Paper

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Abstract

The purpose of this paper is to generalize regression models for repeated categorical data based on maximizing a conditional likelihood. Some existing methods, such as those proposed by Duncan (1985), Fischer (1989), and Agresti (1993, and 1997) are special cases of this latent variable approach, used to account for dependencies in clustered observations. The generalization concerns the incorporation of rather general data structures such as subject-specific time-dependent covariates, a variable number of observations per subject and time periods of arbitrary length in order to evaluate treatment effects on a categorical response variable via a linear parameterization. The response may be polytomous, ordinal or dichotomous. The main tool is the log-linear representation of appropriately parameterized Rasch-type models, which can be fitted using standard software, e.g., R. The proposed method is applied to data from a psychiatric study on the evaluation of psychobiological variables in the therapy of depression. The effects of plasma levels of the antidepressant drug Clomipramine and neuroendocrinological variables on the presence or absence of anxiety symptoms in 45 female patients are analyzed. The individual measurements of the time dependent variables were recorded on 2 to 11 occasions. The findings show that certain combinations of the variables investigated are favorable for the treatment outcome.
Original languageEnglish
Place of PublicationWien
DOIs
Publication statusPublished - 1 Jul 2008

Publication series

SeriesResearch Report Series / Department of Statistics and Mathematics
Number69

WU Working Paper Series

  • Research Report Series / Department of Statistics and Mathematics

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