© 2014 SAGE Publications. Count data are most commonly modeled using the Poisson model, or by one of its many extensions. Such extensions are needed for a variety of reasons: (1) a hierarchical structure in the data, e.g., due to clustering, the collection of repeated measurements of the outcome, etc.; (2) the occurrence of overdispersion (or underdispersion), meaning that the variability encountered in the data is not equal to the mean, as prescribed by the Poisson distribution; and (3) the occurrence of extra zeros beyond what a Poisson model allows. The first issue is often accommodated through the inclusion of random subject-specific effects. Though not always, one conventionally assumes such random effects to be normally distributed. O...
Poisson distribution is one of discrete distribution that is often used in modeling of rare events. ...
Violations of Poisson assumptions usually result in overdispersion, where the variance of the model ...
© 2013, © 2013 Taylor & Francis. Many applications in public health, medical and biomedical or oth...
A natural approach to analyzing the effect of covariates on a count response variable is to use a P...
Health sciences research often involves analyses of repeated measurement or longitudinal count data ...
The usual starting point for modeling count data (i.e., data that take only non-negative integer val...
The zero inflated models are usually used in modeling count data with excess zeros where the existen...
We consider the analysis of count data in which the observed frequency of zero counts is unusually l...
A Poisson regression model is commonly used to model count data. The Poisson model assumes equidispe...
We present several modifications of the Poisson and negative binomial models for count data to accom...
We frequently encounter outcomes of count that have extra variation. This paper considers several al...
Iddi and Molenberghs (2012) merged the attractive features of the so-called combined model of Molenb...
Count data are collected repeatedly over time in many applications, such as biology, epidemiology, a...
Researchers often encounter data which exhibit an excess number of zeroes than would be expected in ...
Excess zeros and overdispersion are commonly encountered phenomena that limit the use of traditional...
Poisson distribution is one of discrete distribution that is often used in modeling of rare events. ...
Violations of Poisson assumptions usually result in overdispersion, where the variance of the model ...
© 2013, © 2013 Taylor & Francis. Many applications in public health, medical and biomedical or oth...
A natural approach to analyzing the effect of covariates on a count response variable is to use a P...
Health sciences research often involves analyses of repeated measurement or longitudinal count data ...
The usual starting point for modeling count data (i.e., data that take only non-negative integer val...
The zero inflated models are usually used in modeling count data with excess zeros where the existen...
We consider the analysis of count data in which the observed frequency of zero counts is unusually l...
A Poisson regression model is commonly used to model count data. The Poisson model assumes equidispe...
We present several modifications of the Poisson and negative binomial models for count data to accom...
We frequently encounter outcomes of count that have extra variation. This paper considers several al...
Iddi and Molenberghs (2012) merged the attractive features of the so-called combined model of Molenb...
Count data are collected repeatedly over time in many applications, such as biology, epidemiology, a...
Researchers often encounter data which exhibit an excess number of zeroes than would be expected in ...
Excess zeros and overdispersion are commonly encountered phenomena that limit the use of traditional...
Poisson distribution is one of discrete distribution that is often used in modeling of rare events. ...
Violations of Poisson assumptions usually result in overdispersion, where the variance of the model ...
© 2013, © 2013 Taylor & Francis. Many applications in public health, medical and biomedical or oth...