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Original Articles

Mixture Model Framework Facilitates Understanding of Zero-Inflated and Hurdle Models for Count Data

Pages 943-946 | Received 24 Apr 2007, Accepted 02 May 2007, Published online: 21 Sep 2007
 

Abstract

In this note, we comment on the zero-inflated and hurdle models for count data presented by Rose et al., Citation2006, J. Biopharma. Stat. 16:463–481. By viewing these models as finite mixture models, one gains a better understanding of the components of the models, including assumptions about the latent variable(s) in the finite mixture models. Deciding whether a zero-inflated or hurdle model is appropriate for a given data set requires close collaboration with subject matter experts. For instance, in modeling vaccine adverse event count data, the pharmacokinetic rationale for the occurrence of an adverse event and the likelihood of detecting or reporting the adverse event are important considerations for mixture model development.

ACKNOWLEDGMENTS

The findings and conclusions in this report are those of the author and do not necessarily represent the views of the funding agency.

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