Background: Zero-inflated models are generally aimed to addressing the problem that arises from having two different sources that generate the zero values observed in a distribution. In practice, this is due to the fact that the population studied actually consists of two subpopulations: one in which the value zero is by default (structural zero) and the other is circumstantial (sample zero). Methods: This work proposes a new methodology to fit zero inflated Bernoulli data from a Bayesian approach, able to distinguish between two potential sources of zeros (structural and non-structural). Results: The proposed methodology performance has been evaluated through a comprehensive simulation study, and it has been compiled as an R package freely...
Multivariate ordinal response data, such as severity of pain, degree of disability, and satisfaction...
Excess of zeros is a commonly encountered phenomenon that limits the use of traditional regression m...
Multivariate count data with zero-inflation is common throughout pure and applied science. Such coun...
The performance of several models under different conditions of zero-inflation and dispersion are ev...
The performance of several models under different conditions of zero-inflation and dispersion are ev...
Count data with structural zeros are common in public health applications. There are considerable re...
Les modèles de régressions à inflation de zéros constituent un outil très puissant pour l’analyse de...
The zero-inflated regression models are a very powerful tool for the analysis of counting data with ...
Applications of zero-inflated count data models have proliferated in health economics. However, zero...
The zero-inflated regression models are a very powerful tool for the analysis of counting data with ...
The zero inflated models are usually used in modeling count data with excess zeros where the existen...
Count data with excessive zeros and/or over-dispersion are prevalent in a wide variety of discipline...
This paper develops stochastic search variable selection (SSVS) for zero-inflated count models which...
We develop a dynamic zero-inflated model to analyse the number of hospital admissions within an agi...
This paper is concerned with the analysis of zero-inflated count data when time of exposure varies. ...
Multivariate ordinal response data, such as severity of pain, degree of disability, and satisfaction...
Excess of zeros is a commonly encountered phenomenon that limits the use of traditional regression m...
Multivariate count data with zero-inflation is common throughout pure and applied science. Such coun...
The performance of several models under different conditions of zero-inflation and dispersion are ev...
The performance of several models under different conditions of zero-inflation and dispersion are ev...
Count data with structural zeros are common in public health applications. There are considerable re...
Les modèles de régressions à inflation de zéros constituent un outil très puissant pour l’analyse de...
The zero-inflated regression models are a very powerful tool for the analysis of counting data with ...
Applications of zero-inflated count data models have proliferated in health economics. However, zero...
The zero-inflated regression models are a very powerful tool for the analysis of counting data with ...
The zero inflated models are usually used in modeling count data with excess zeros where the existen...
Count data with excessive zeros and/or over-dispersion are prevalent in a wide variety of discipline...
This paper develops stochastic search variable selection (SSVS) for zero-inflated count models which...
We develop a dynamic zero-inflated model to analyse the number of hospital admissions within an agi...
This paper is concerned with the analysis of zero-inflated count data when time of exposure varies. ...
Multivariate ordinal response data, such as severity of pain, degree of disability, and satisfaction...
Excess of zeros is a commonly encountered phenomenon that limits the use of traditional regression m...
Multivariate count data with zero-inflation is common throughout pure and applied science. Such coun...