This paper is concerned with the analysis of zero-inflated count data when time of exposure varies. It proposes a new zero-inflated count data model that is based on two homogeneous Poisson processes and accounts for exposure time in a theory consistent way. The new model is used in an application to the effect of insurance generosity on the number of absent days
The purpose of this doctoral thesis is to provide new econometric models to analyze longitudinal cou...
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...
This paper is concerned with the analysis of zero-inflated count data when time of exposure varies. ...
This paper is concerned with the analysis of zero-inflated count data when time of exposure varies. ...
Applications of zero-inflated count data models have proliferated in health economics. However, zero...
We develop models for longitudinal count data with a large number of zeros, a feature known as zero-...
Response variables that are scored as counts and that present a large number of zeros often arise in...
The performance of several models under different conditions of zero-inflation and dispersion are ev...
A natural approach to analyzing the effect of covariates on a count response variable is to use a P...
Time series data with excessive zeros frequently occur in medical and health studies. To analyze tim...
The performance of several models under different conditions of zero-inflation and dispersion are ev...
We consider the problem of modelling count data with excess zeros and over-dispersion which are comm...
Abstract: For count responses, the situation of excess zeros (relative to what standard models allow...
The hunger for bonus is a well-known phenomenon in insurance, meaning that the insured does not repo...
The purpose of this doctoral thesis is to provide new econometric models to analyze longitudinal cou...
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...
This paper is concerned with the analysis of zero-inflated count data when time of exposure varies. ...
This paper is concerned with the analysis of zero-inflated count data when time of exposure varies. ...
Applications of zero-inflated count data models have proliferated in health economics. However, zero...
We develop models for longitudinal count data with a large number of zeros, a feature known as zero-...
Response variables that are scored as counts and that present a large number of zeros often arise in...
The performance of several models under different conditions of zero-inflation and dispersion are ev...
A natural approach to analyzing the effect of covariates on a count response variable is to use a P...
Time series data with excessive zeros frequently occur in medical and health studies. To analyze tim...
The performance of several models under different conditions of zero-inflation and dispersion are ev...
We consider the problem of modelling count data with excess zeros and over-dispersion which are comm...
Abstract: For count responses, the situation of excess zeros (relative to what standard models allow...
The hunger for bonus is a well-known phenomenon in insurance, meaning that the insured does not repo...
The purpose of this doctoral thesis is to provide new econometric models to analyze longitudinal cou...
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...