The traditional Poisson regression model for fitting count data is considered inadequate to fit over-or under-dispersed count data and new models have been developed to make up for such inadequacies inherent in the model. In this study, Bayesian Multi-level model was proposed using the No-U-Turn Sampler (NUTS) sampler to sample from the posterior distribution. A simulation was carried out for both over-and under-dispersed data from discrete Weibull distribution. Pareto k diagnostics was implemented, and the result showed that under-dispersed and over-dispersed simulated data has all its k value to be less than 0.5, which indicate that all the observations are good. Also all WAIC were the same as LOO-IC except for Poisson in the over-dispers...
In this article we propose a multiple-inflation Poisson regression to model count response data cont...
Although Bayesian nonparametric mixture models for continuous data are well developed, the literatur...
Abstract: Count data are subject to considerable sources of what is often referred to as non-samplin...
Bias in parameter estimation of count data is a common concern. The concern is even greater when all...
Multilevel complex survey data are obtained from study designs that involve multiple stages of sampl...
This dissertation focuses on the development of methodology for the analysis of multivariate count r...
In sets of count data, the sample variance is often considerably larger or smaller than the sample m...
This dissertation focuses on the development of methodology for the analysis of multivariate count r...
It is important to fit count data with suitable model(s), models such as Poisson Regression, Quassi ...
<div><p>Frequent problems in applied research preventing the application of the classical Poisson lo...
Count data models have a large number of pratical applications. However there can be several problem...
Discrete Weibul (DW) is considered to have the ability to capture under and over-dispersion simultan...
Longitudinal data refer to multiple observations collected on the same subject (or unit) over time. ...
It is well known that the Type I error rate will exceed α when multiple hypothesis tests are conduct...
It is well known that the Type I error rate will exceed α when multiple hypothesis tests are conduct...
In this article we propose a multiple-inflation Poisson regression to model count response data cont...
Although Bayesian nonparametric mixture models for continuous data are well developed, the literatur...
Abstract: Count data are subject to considerable sources of what is often referred to as non-samplin...
Bias in parameter estimation of count data is a common concern. The concern is even greater when all...
Multilevel complex survey data are obtained from study designs that involve multiple stages of sampl...
This dissertation focuses on the development of methodology for the analysis of multivariate count r...
In sets of count data, the sample variance is often considerably larger or smaller than the sample m...
This dissertation focuses on the development of methodology for the analysis of multivariate count r...
It is important to fit count data with suitable model(s), models such as Poisson Regression, Quassi ...
<div><p>Frequent problems in applied research preventing the application of the classical Poisson lo...
Count data models have a large number of pratical applications. However there can be several problem...
Discrete Weibul (DW) is considered to have the ability to capture under and over-dispersion simultan...
Longitudinal data refer to multiple observations collected on the same subject (or unit) over time. ...
It is well known that the Type I error rate will exceed α when multiple hypothesis tests are conduct...
It is well known that the Type I error rate will exceed α when multiple hypothesis tests are conduct...
In this article we propose a multiple-inflation Poisson regression to model count response data cont...
Although Bayesian nonparametric mixture models for continuous data are well developed, the literatur...
Abstract: Count data are subject to considerable sources of what is often referred to as non-samplin...