Mixture distribution analysis provides us with a tool for identifying unlabeled clusters that naturally arise in a data set. In this paper, we demonstrate how to use the information criteria AIC and BIC to choose the optimal number of clusters for a given set of univariate Poisson data. We give an empirical comparison between minimum Hellinger distance (MHD) estimation and EM estimation for finding parameters in a mixture of Poisson distributions with artificial data. In addition, we discuss Bayes error in the context of classification problems with mixture of 2, 3, 4, and 5 Poisson models. Finally, we provide an example with real data, taken from a study that looked at sudden infant death syndrome (SIDS) co...
We examine the problem of jointly selecting the number of components and variables in finite mixture...
PubMedID: 27999611Early heart disease control can be achieved by high disease prediction and diagnos...
Abstract—The goal of data clustering is to partition data points into groups to optimize a given obj...
When analyzing clustered count data derived from several latent subpopulations, the finite mixture o...
We introduce a new approach to deciding the number of clusters. The approach is applied to Optimally...
The mixture approach to clustering requires the user to specify both the number of components to be ...
Inference for mixture models based on likelihood estimates suffers from lack of robustness. The pres...
Abstract: This paper’s purpose is twofold: first it addresses the adequacy of some theoretical infor...
We exploit a suitable moment-based reparametrization of the Poisson mixtures distributions for devel...
Clustering is task of assigning the objects into different groups so that the objects are more simil...
Count data are very common in health services research, and very commonly the basic Poisson regressi...
In this thesis, a mixture-model cluster analysis technique under different covariance structures of ...
<p>Clustering methods are designed to separate heterogeneous data into groups of similar objects suc...
In health and social science and other fields where count data analysis is important, zero-inflated ...
In this dissertation, we extend several relatively new developments in statistical model selection a...
We examine the problem of jointly selecting the number of components and variables in finite mixture...
PubMedID: 27999611Early heart disease control can be achieved by high disease prediction and diagnos...
Abstract—The goal of data clustering is to partition data points into groups to optimize a given obj...
When analyzing clustered count data derived from several latent subpopulations, the finite mixture o...
We introduce a new approach to deciding the number of clusters. The approach is applied to Optimally...
The mixture approach to clustering requires the user to specify both the number of components to be ...
Inference for mixture models based on likelihood estimates suffers from lack of robustness. The pres...
Abstract: This paper’s purpose is twofold: first it addresses the adequacy of some theoretical infor...
We exploit a suitable moment-based reparametrization of the Poisson mixtures distributions for devel...
Clustering is task of assigning the objects into different groups so that the objects are more simil...
Count data are very common in health services research, and very commonly the basic Poisson regressi...
In this thesis, a mixture-model cluster analysis technique under different covariance structures of ...
<p>Clustering methods are designed to separate heterogeneous data into groups of similar objects suc...
In health and social science and other fields where count data analysis is important, zero-inflated ...
In this dissertation, we extend several relatively new developments in statistical model selection a...
We examine the problem of jointly selecting the number of components and variables in finite mixture...
PubMedID: 27999611Early heart disease control can be achieved by high disease prediction and diagnos...
Abstract—The goal of data clustering is to partition data points into groups to optimize a given obj...