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      Random effect models for repeated measures of zero-inflated count data

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      Statistical Modelling: An International Journal
      SAGE Publications

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          Zero-Inflated Poisson Regression, with an Application to Defects in Manufacturing

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            Specification and testing of some modified count data models

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              Zero-inflated Poisson and binomial regression with random effects: a case study.

              D. Hall (2000)
              In a 1992 Technometrics paper, Lambert (1992, 34, 1-14) described zero-inflated Poisson (ZIP) regression, a class of models for count data with excess zeros. In a ZIP model, a count response variable is assumed to be distributed as a mixture of a Poisson(lambda) distribution and a distribution with point mass of one at zero, with mixing probability p. Both p and lambda are allowed to depend on covariates through canonical link generalized linear models. In this paper, we adapt Lambert's methodology to an upper bounded count situation, thereby obtaining a zero-inflated binomial (ZIB) model. In addition, we add to the flexibility of these fixed effects models by incorporating random effects so that, e.g., the within-subject correlation and between-subject heterogeneity typical of repeated measures data can be accommodated. We motivate, develop, and illustrate the methods described here with an example from horticulture, where both upper bounded count (binomial-type) and unbounded count (Poisson-type) data with excess zeros were collected in a repeated measures designed experiment.
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                Author and article information

                Journal
                Statistical Modelling: An International Journal
                Statistical Modelling
                SAGE Publications
                1471-082X
                1477-0342
                August 18 2016
                August 18 2016
                : 5
                : 1
                : 1-19
                Article
                10.1191/1471082X05st084oa
                50424f1e-0101-47e7-b44d-98df50e62bc4
                © 2016
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