When count data exhibit excess zero, that is more zero counts than a simpler parametric distribution can model, the zero-inflated Poisson (ZIP) or zeroinflated negative binomial (ZINB) models are often used. Variable selection for these models is even more challenging than for other regression situations because the availability of p covariates implies 4p possible models. We adapt to zero-inflated models an approach for variable selection that avoids the screening of all possible models. This approach is based on a stochastic search through the space of all possible models, which generates a chain of interesting models. As an additional novelty, we propose three ways of extracting information from this rich chain and we compare them in two ...
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...
We present several modifications of the Poisson and negative binomial models for count data to accom...
This paper develops stochastic search variable selection (SSVS) for zero-inflated count models which...
This paper develops stochastic search variable selection (SSVS) for zero-inflated count models which...
The zero inflated models are usually used in modeling count data with excess zeros where the existen...
Count data with structural zeros are common in public health applications. There are considerable re...
In health services and outcome research, count outcomes are frequently encountered and often have a ...
Zero‐inflated count data are very common in health surveys. This study develops new variable selecti...
When modelling count data, it is possible to have excessive zeros in the data in many applications. ...
Researchers often encounter data which exhibit an excess number of zeroes than would be expected in ...
In a variety of research domains, data are generated as a consequence of the count process and may p...
Count data with excessive zeros and/or over-dispersion are prevalent in a wide variety of discipline...
Abstract: The zero altered count models are being widely used in various disciplines such as econome...
Researchers in many fields including biomedical often make statistical inferences involving the anal...
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...
We present several modifications of the Poisson and negative binomial models for count data to accom...
This paper develops stochastic search variable selection (SSVS) for zero-inflated count models which...
This paper develops stochastic search variable selection (SSVS) for zero-inflated count models which...
The zero inflated models are usually used in modeling count data with excess zeros where the existen...
Count data with structural zeros are common in public health applications. There are considerable re...
In health services and outcome research, count outcomes are frequently encountered and often have a ...
Zero‐inflated count data are very common in health surveys. This study develops new variable selecti...
When modelling count data, it is possible to have excessive zeros in the data in many applications. ...
Researchers often encounter data which exhibit an excess number of zeroes than would be expected in ...
In a variety of research domains, data are generated as a consequence of the count process and may p...
Count data with excessive zeros and/or over-dispersion are prevalent in a wide variety of discipline...
Abstract: The zero altered count models are being widely used in various disciplines such as econome...
Researchers in many fields including biomedical often make statistical inferences involving the anal...
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...
We present several modifications of the Poisson and negative binomial models for count data to accom...