Poisson regression can be challenging with sparse data, in particular with certain data constellations where maximum likelihood estimates of regression coefficients do not exist. This paper provides a comprehensive evaluation of methods that give finite regression coefficients when maximum likelihood estimates do not exist, including Firth's general approach to bias reduction, exact conditional Poisson regression, and a Bayesian estimator using weakly informative priors that can be obtained via data augmentation. Furthermore, we include in our evaluation a new proposal for a modification of Firth's approach, improving its performance for predictions without compromising its attractive bias-correcting properties for regression coefficients. ...
Poisson log-linear models are ubiquitous in many applications, and one of the most popular approache...
Due to the large amount of accidents negatively affecting the wellbeing of the survivors and their f...
This work is devoted to simultaneously estimating the parameters of the distributions of several ind...
The impact of sparse data conditions was examined among one or more predictor variables in logistic ...
Bias in parameter estimation of count data is a common concern. The concern is even greater when all...
Sparse-data problems are common, and approaches are needed to evaluate the sensitivity of parameter ...
A new estimator for the Poisson model is introduced in this study. Poisson regression model is an im...
Poisson regression is useful in modeling count data. In a study with many independent variables, it ...
Bayesian inference for models with intractable likelihood functions represents a challenging suite o...
We note that the existence of the maximum likelihood estimates for Poisson regression depends on the...
Missing data are frequently encountered in longitudinal clinical trials. To better monitor and under...
The Bayesian approach, a non-classical estimation technique, is very widely used in statistical infe...
We note that the existence of the maximum likelihood estimates for Poisson regression depends on the...
We note that the existence of the maximum likelihood estimates in Poisson regression depends on the ...
Multivariate count data with zero-inflation is common throughout pure and applied science. Such coun...
Poisson log-linear models are ubiquitous in many applications, and one of the most popular approache...
Due to the large amount of accidents negatively affecting the wellbeing of the survivors and their f...
This work is devoted to simultaneously estimating the parameters of the distributions of several ind...
The impact of sparse data conditions was examined among one or more predictor variables in logistic ...
Bias in parameter estimation of count data is a common concern. The concern is even greater when all...
Sparse-data problems are common, and approaches are needed to evaluate the sensitivity of parameter ...
A new estimator for the Poisson model is introduced in this study. Poisson regression model is an im...
Poisson regression is useful in modeling count data. In a study with many independent variables, it ...
Bayesian inference for models with intractable likelihood functions represents a challenging suite o...
We note that the existence of the maximum likelihood estimates for Poisson regression depends on the...
Missing data are frequently encountered in longitudinal clinical trials. To better monitor and under...
The Bayesian approach, a non-classical estimation technique, is very widely used in statistical infe...
We note that the existence of the maximum likelihood estimates for Poisson regression depends on the...
We note that the existence of the maximum likelihood estimates in Poisson regression depends on the ...
Multivariate count data with zero-inflation is common throughout pure and applied science. Such coun...
Poisson log-linear models are ubiquitous in many applications, and one of the most popular approache...
Due to the large amount of accidents negatively affecting the wellbeing of the survivors and their f...
This work is devoted to simultaneously estimating the parameters of the distributions of several ind...