We present several modifications of the Poisson and negative binomial models for count data to accommodate cases in which the number of zeros in the data exceed what would typically be predicted by either model. The excess zeros can masquerade as overdispersion. We present a new test procedure for distinguishing between zero inflation and overdispersion. We also develop a model for sample selection which is analogous to the Heckman style specification for continuous choice models. An application is presented to a data set on consumer loan behavior in which both of these phenomena are clearly present
We consider the analysis of count data in which the observed frequency of zero counts is unusually l...
WOS:000822397600012Count data regression has been widely used in various disciplines, particularly h...
The usual starting point for modeling count data (i.e., data that take only non-negative integer val...
A natural approach to analyzing the effect of covariates on a count response variable is to use a P...
© 2014 SAGE Publications. Count data are most commonly modeled using the Poisson model, or by one of...
Researchers often encounter data which exhibit an excess number of zeroes than would be expected in ...
Violations of Poisson assumptions usually result in overdispersion, where the variance of the model ...
Health sciences research often involves analyses of repeated measurement or longitudinal count data ...
While there do exist several statistical tests for detecting zero modification in count data regress...
The zero inflated models are usually used in modeling count data with excess zeros where the existen...
Marginalised models are in great demand by many researchers in the life sciences, particularly in cl...
The performance of several models under different conditions of zero-inflation and dispersion are ev...
Count data with excessive zeros and/or over-dispersion are prevalent in a wide variety of discipline...
Applications of zero-inflated count data models have proliferated in health economics. However, zero...
In this paper is proposed a straightforward model selection approach that indicates the most suitabl...
We consider the analysis of count data in which the observed frequency of zero counts is unusually l...
WOS:000822397600012Count data regression has been widely used in various disciplines, particularly h...
The usual starting point for modeling count data (i.e., data that take only non-negative integer val...
A natural approach to analyzing the effect of covariates on a count response variable is to use a P...
© 2014 SAGE Publications. Count data are most commonly modeled using the Poisson model, or by one of...
Researchers often encounter data which exhibit an excess number of zeroes than would be expected in ...
Violations of Poisson assumptions usually result in overdispersion, where the variance of the model ...
Health sciences research often involves analyses of repeated measurement or longitudinal count data ...
While there do exist several statistical tests for detecting zero modification in count data regress...
The zero inflated models are usually used in modeling count data with excess zeros where the existen...
Marginalised models are in great demand by many researchers in the life sciences, particularly in cl...
The performance of several models under different conditions of zero-inflation and dispersion are ev...
Count data with excessive zeros and/or over-dispersion are prevalent in a wide variety of discipline...
Applications of zero-inflated count data models have proliferated in health economics. However, zero...
In this paper is proposed a straightforward model selection approach that indicates the most suitabl...
We consider the analysis of count data in which the observed frequency of zero counts is unusually l...
WOS:000822397600012Count data regression has been widely used in various disciplines, particularly h...
The usual starting point for modeling count data (i.e., data that take only non-negative integer val...