Count data with excessive zeros are ubiquitous in healthcare, medical, and scientific studies. There are numerous articles that show how to fit Poisson and other models which account for the excessive zeros. However, in many situations, besides zero, the frequency of another count k tends to be higher in the data. The zero- and k-inflated Poisson distribution model (ZkIP) is appropriate in such situations The ZkIP distribution essentially is a mixture distribution of Poisson and degenerate distributions at points zero and k. In this article, we study the fundamental properties of this mixture distribution. Using stochastic representation, we provide details for obtaining parameter estimates of the ZkIP regression model using the Expectation...
The zero-inflated Poisson regression model is often used to analyse count data with an excess of zer...
The usual starting point for modeling count data (i.e., data that take only non-negative integer val...
Researchers often encounter data which exhibit an excess number of zeroes than would be expected in ...
Count data with excessive zeros are ubiquitous in healthcare, medical, and scientific studies. There...
In health and social science and other fields where count data analysis is important, zero-inflated ...
Count data often exhibits inflated counts for zero. There are numerous papers in the literature that...
Excess zeros and overdispersion are commonly encountered phenomena that limit the use of traditional...
While excess zeros are often thought to cause data over-dispersion (i.e. when the variance exceeds t...
This paper discusses a class of Markov zero-inflated Poisson regression models for a time series of ...
Abstract: The zero altered count models are being widely used in various disciplines such as econome...
Regression analysis is used to determine relationship between one or several response variable (Y) w...
This paper deals with the zero-inflated Poisson distribution. First the Poisson model is defined and...
Researchers in many fields including biomedical often make statistical inferences involving the anal...
Typically, a Poisson regression model is assumed for count data. In many cases, there are many zeros...
A natural approach to analyzing the effect of covariates on a count response variable is to use a P...
The zero-inflated Poisson regression model is often used to analyse count data with an excess of zer...
The usual starting point for modeling count data (i.e., data that take only non-negative integer val...
Researchers often encounter data which exhibit an excess number of zeroes than would be expected in ...
Count data with excessive zeros are ubiquitous in healthcare, medical, and scientific studies. There...
In health and social science and other fields where count data analysis is important, zero-inflated ...
Count data often exhibits inflated counts for zero. There are numerous papers in the literature that...
Excess zeros and overdispersion are commonly encountered phenomena that limit the use of traditional...
While excess zeros are often thought to cause data over-dispersion (i.e. when the variance exceeds t...
This paper discusses a class of Markov zero-inflated Poisson regression models for a time series of ...
Abstract: The zero altered count models are being widely used in various disciplines such as econome...
Regression analysis is used to determine relationship between one or several response variable (Y) w...
This paper deals with the zero-inflated Poisson distribution. First the Poisson model is defined and...
Researchers in many fields including biomedical often make statistical inferences involving the anal...
Typically, a Poisson regression model is assumed for count data. In many cases, there are many zeros...
A natural approach to analyzing the effect of covariates on a count response variable is to use a P...
The zero-inflated Poisson regression model is often used to analyse count data with an excess of zer...
The usual starting point for modeling count data (i.e., data that take only non-negative integer val...
Researchers often encounter data which exhibit an excess number of zeroes than would be expected in ...