In this paper, a log-linear multidimensional Rasch model is proposed for capture-recapture analysis of registration data. In the model, heterogeneity of capture probabilities is taken into account, and registrations are viewed as dichotomously scored indicators of one or more latent variables that can account for correlations among registrations. It is shown how the probability of a generic capture profile is expressed under the log-linear multidimensional Rasch model and how the parameters of the traditional log-linear model are derived from those of the log-linear multidimensional Rasch model. Finally, an application of the model to neural tube defects data is presented.

A log-linear multidimensional Rasch model for capture-recapture / Pelle, E.; Hessen, D. J.; van der Heijden, P. G. M.. - In: STATISTICS IN MEDICINE. - ISSN 0277-6715. - 35:4(2016), pp. 622-634. [10.1002/sim.6741]

A log-linear multidimensional Rasch model for capture-recapture

Pelle, E.
;
2016

Abstract

In this paper, a log-linear multidimensional Rasch model is proposed for capture-recapture analysis of registration data. In the model, heterogeneity of capture probabilities is taken into account, and registrations are viewed as dichotomously scored indicators of one or more latent variables that can account for correlations among registrations. It is shown how the probability of a generic capture profile is expressed under the log-linear multidimensional Rasch model and how the parameters of the traditional log-linear model are derived from those of the log-linear multidimensional Rasch model. Finally, an application of the model to neural tube defects data is presented.
2016
30-set-2015
35
4
622
634
A log-linear multidimensional Rasch model for capture-recapture / Pelle, E.; Hessen, D. J.; van der Heijden, P. G. M.. - In: STATISTICS IN MEDICINE. - ISSN 0277-6715. - 35:4(2016), pp. 622-634. [10.1002/sim.6741]
Pelle, E.; Hessen, D. J.; van der Heijden, P. G. M.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11380/1171627
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