In recent years, the Poisson lognormal mixed model has been frequently used in modeling count data because it can accommodate both the over-dispersion of the data and the existence of within-subject correlation. Since the likelihood function of this model is expressed in terms of an intractable integral, estimating the parameters and obtaining inference for the parameters are challenging problems. Some approximation procedures have been proposed in the literature; however, they are computationally intensive. Moreover, the existing studies of approximate parameter inference using the Gaussian variational approximation method are usually restricted to models with only one predictor. In this paper, we consider the Poisson lognormal mixed model...
The dissertation consists of two parts. In the first part we introduce and investigate a class of m...
Fast variational approximate algorithms are developed for Bayesian semiparametric regression when th...
Abstract: The Poisson loglinear model is a common choice for explaining variability in counts. Howev...
Likelihood-based inference for the parameters of generalized linear mixed models is hindered by the ...
We derive the precise asymptotic distributional behavior of Gaussian variational approximate estimat...
Recently, variational Bayesian methods have come into the field of statistics. These methods aim to ...
Abstract. Approximating non-Gaussian noise processes with Gaussian mod-els is standard in data analy...
Variational approximation methods have become a mainstay of contemporary machine learning methodolog...
A variety of methods of modelling overdispersed count data are compared. The methods are classified ...
Variational approximation methods have become a mainstay of contemporary Machine Learn-ing methodolo...
Sutradhar and Qu (Canad. J. Statist. 26 (1998) 169) have introduced a small variance component (for ...
Bilinear models of count data with Poisson distribution are popular in applications such as matrix f...
Generalized linear latent variable models (GLLVMs) are a powerful class of models for understanding ...
The Poisson model is frequently employed to describe count data, but in a Bayesian context it leads ...
In several applications data are grouped and there are within-group correlations. With continuous da...
The dissertation consists of two parts. In the first part we introduce and investigate a class of m...
Fast variational approximate algorithms are developed for Bayesian semiparametric regression when th...
Abstract: The Poisson loglinear model is a common choice for explaining variability in counts. Howev...
Likelihood-based inference for the parameters of generalized linear mixed models is hindered by the ...
We derive the precise asymptotic distributional behavior of Gaussian variational approximate estimat...
Recently, variational Bayesian methods have come into the field of statistics. These methods aim to ...
Abstract. Approximating non-Gaussian noise processes with Gaussian mod-els is standard in data analy...
Variational approximation methods have become a mainstay of contemporary machine learning methodolog...
A variety of methods of modelling overdispersed count data are compared. The methods are classified ...
Variational approximation methods have become a mainstay of contemporary Machine Learn-ing methodolo...
Sutradhar and Qu (Canad. J. Statist. 26 (1998) 169) have introduced a small variance component (for ...
Bilinear models of count data with Poisson distribution are popular in applications such as matrix f...
Generalized linear latent variable models (GLLVMs) are a powerful class of models for understanding ...
The Poisson model is frequently employed to describe count data, but in a Bayesian context it leads ...
In several applications data are grouped and there are within-group correlations. With continuous da...
The dissertation consists of two parts. In the first part we introduce and investigate a class of m...
Fast variational approximate algorithms are developed for Bayesian semiparametric regression when th...
Abstract: The Poisson loglinear model is a common choice for explaining variability in counts. Howev...