ABSTRACT. The zero-inflated Poisson regression model is a special case of finite mixture models that is useful for count data containing many zeros. Typically, maximum likelihood (ML) estimation is used for fitting such models. However, it is well known that the ML estimator is highly sensitive to the presence of outliers and can become unstable when mixture components are poorly separated. In this paper, we propose an alternative robust estimation approach, robust expectation-solution (RES) estimation. We compare the RES approach with an existing robust approach, minimum Hellinger distance (MHD) estimation. Simulation results indicate that both methods improve on ML when outliers are present and/or when the mixture components are poorly se...
Summary. The k-component Poisson regression mixture with random effects is an effective model in des...
Many datasets are collected automatically, and are thus easily contaminated by outliers. In order to...
Excess zeros and overdispersion are commonly encountered phenomena that limit the use of traditional...
When analyzing clustered count data derived from several latent subpopulations, the finite mixture o...
A mixture model was adopted from the maximum pseudo-likelihood approach under complex sampling desig...
Applications of zero-inflated count data models have proliferated in health economics. However, zero...
Inference for mixture models based on likelihood estimates suffers from lack of robustness. The pres...
Count data often exhibits inflated counts for zero. There are numerous papers in the literature that...
Count data with excessive zeros are ubiquitous in healthcare, medical, and scientific studies. There...
The existing methods for tting mixture regression models assume a normal dis- tribution for error ...
An underlying population may contain a large proportion of zero values which cause the population di...
A project submitted to the faculty of the graduate school of the University of Minnesota in partial ...
The existing methods for tting mixture regression models assume a normal dis-tribution for error and...
In health and social science and other fields where count data analysis is important, zero-inflated ...
Count data with excessive zeros are ubiquitous in healthcare, medical, and scientific studies. There...
Summary. The k-component Poisson regression mixture with random effects is an effective model in des...
Many datasets are collected automatically, and are thus easily contaminated by outliers. In order to...
Excess zeros and overdispersion are commonly encountered phenomena that limit the use of traditional...
When analyzing clustered count data derived from several latent subpopulations, the finite mixture o...
A mixture model was adopted from the maximum pseudo-likelihood approach under complex sampling desig...
Applications of zero-inflated count data models have proliferated in health economics. However, zero...
Inference for mixture models based on likelihood estimates suffers from lack of robustness. The pres...
Count data often exhibits inflated counts for zero. There are numerous papers in the literature that...
Count data with excessive zeros are ubiquitous in healthcare, medical, and scientific studies. There...
The existing methods for tting mixture regression models assume a normal dis- tribution for error ...
An underlying population may contain a large proportion of zero values which cause the population di...
A project submitted to the faculty of the graduate school of the University of Minnesota in partial ...
The existing methods for tting mixture regression models assume a normal dis-tribution for error and...
In health and social science and other fields where count data analysis is important, zero-inflated ...
Count data with excessive zeros are ubiquitous in healthcare, medical, and scientific studies. There...
Summary. The k-component Poisson regression mixture with random effects is an effective model in des...
Many datasets are collected automatically, and are thus easily contaminated by outliers. In order to...
Excess zeros and overdispersion are commonly encountered phenomena that limit the use of traditional...