Developing an efficient computational scheme for high-dimensional Bayesian variable selection in generalised linear models and survival models has always been a challenging problem due to the absence of closed-form solutions for the marginal likelihood. The RJMCMC approach can be employed to samples model and coefficients jointly, but effective design of the transdimensional jumps of RJMCMC can be challenge, making it hard to implement. Alternatively, the marginal likelihood can be derived using data-augmentation scheme e.g. Polya-gamma data argumentation for logistic regression) or through other estimation methods. However, suitable data-augmentation schemes are not available for every generalised linear and survival models, and using esti...
Bayesian variable selection becomes more and more important in statistical analyses, in particular w...
Generalized linear mixed models (GLMM) are used for inference and prediction in a wide range of diff...
This article describes a method for efficient posterior simulation for Bayesian variable selection i...
Bayesian variable selection is an important method for discovering variables which are most useful f...
We introduce a framework for efficient Markov chain Monte Carlo algorithms targeting discrete-valued...
A simple and efficient adaptive Markov Chain Monte Carlo (MCMC) method, called the Metropolized Adap...
The availability of datasets with large numbers of variables is rapidly increasing. The effective ap...
Due to recent advancements in fields such as information technology and genomics, nowadays one commo...
Inspired by analysis of genomic data, the primary quest is to identify associations between studied ...
Abstract. In large-scale genomic applications vast numbers of molecular features are scanned in orde...
We describe adaptive Markov chain Monte Carlo (MCMC) methods for sampling posterior distributions ar...
In this PhD thesis problems of Bayesian model selection and model averaging are addressed in various...
Advisors: Sanjib Basu.Committee members: Michael Geline; Balakrishna Hosmane; Alan Polansky; Duchwan...
The advent of new genomic technologies has resulted in production of massive data sets. The outcomes...
This article describesmethods for efficient posterior simulation for Bayesian variable selection in ...
Bayesian variable selection becomes more and more important in statistical analyses, in particular w...
Generalized linear mixed models (GLMM) are used for inference and prediction in a wide range of diff...
This article describes a method for efficient posterior simulation for Bayesian variable selection i...
Bayesian variable selection is an important method for discovering variables which are most useful f...
We introduce a framework for efficient Markov chain Monte Carlo algorithms targeting discrete-valued...
A simple and efficient adaptive Markov Chain Monte Carlo (MCMC) method, called the Metropolized Adap...
The availability of datasets with large numbers of variables is rapidly increasing. The effective ap...
Due to recent advancements in fields such as information technology and genomics, nowadays one commo...
Inspired by analysis of genomic data, the primary quest is to identify associations between studied ...
Abstract. In large-scale genomic applications vast numbers of molecular features are scanned in orde...
We describe adaptive Markov chain Monte Carlo (MCMC) methods for sampling posterior distributions ar...
In this PhD thesis problems of Bayesian model selection and model averaging are addressed in various...
Advisors: Sanjib Basu.Committee members: Michael Geline; Balakrishna Hosmane; Alan Polansky; Duchwan...
The advent of new genomic technologies has resulted in production of massive data sets. The outcomes...
This article describesmethods for efficient posterior simulation for Bayesian variable selection in ...
Bayesian variable selection becomes more and more important in statistical analyses, in particular w...
Generalized linear mixed models (GLMM) are used for inference and prediction in a wide range of diff...
This article describes a method for efficient posterior simulation for Bayesian variable selection i...