BackgroundBayesian regression models are widely used in genomic prediction, where the effects of all markers are estimated simultaneously by combining the information from the phenotypic data with priors for the marker effects and other parameters such as variance components or membership probabilities. Inferences from most Bayesian regression models are based on Markov chain Monte Carlo methods, where statistics are computed from a Markov chain constructed to have a stationary distribution that is equal to the posterior distribution of the unknown parameters. In practice, chains of tens of thousands steps are typically used in whole-genome Bayesian analyses, which is computationally intensive.MethodsIn this paper, we propose a fast paralle...
This thesis is focused on the development of computationally efficient procedures for regression mod...
Bayesian inference is widely used nowadays and relies largely on Markov chain Monte Carlo (MCMC) met...
Advances in sequencing technology continue to deliver increasingly large molecular sequence data set...
BackgroundBayesian regression models are widely used in genomic prediction, where the effects of all...
BackgroundIn whole-genome analyses, the number p of marker covariates is often much larger than the ...
Computational intensity and sequential nature of estimation techniques for Bayesian methods in stati...
Abstract Background Running multiple-chain Markov Chain Monte Carlo (MCMC) provides an efficient par...
Abstract Motivation Bayesian inference is widely used nowadays and relies largely on Markov chain Mo...
As technology progresses, the processors used for statistical computation are not getting faster: th...
In Bayesian phylogenetic inference, marginal likelihoods can be estimated using several different me...
Emerging many-core computer architectures provide an incentive for computational methods to exhibit ...
Abstract. In large-scale genomic applications vast numbers of molecular features are scanned in orde...
Background Bayesian networks are directed acyclic graphical models widely used to represent the prob...
As genomic sequence data becomes increasingly available, inferring the phylogeny of the species as t...
Abstract Genomic selection uses genome-wide dense SNP marker genotyping for the prediction of geneti...
This thesis is focused on the development of computationally efficient procedures for regression mod...
Bayesian inference is widely used nowadays and relies largely on Markov chain Monte Carlo (MCMC) met...
Advances in sequencing technology continue to deliver increasingly large molecular sequence data set...
BackgroundBayesian regression models are widely used in genomic prediction, where the effects of all...
BackgroundIn whole-genome analyses, the number p of marker covariates is often much larger than the ...
Computational intensity and sequential nature of estimation techniques for Bayesian methods in stati...
Abstract Background Running multiple-chain Markov Chain Monte Carlo (MCMC) provides an efficient par...
Abstract Motivation Bayesian inference is widely used nowadays and relies largely on Markov chain Mo...
As technology progresses, the processors used for statistical computation are not getting faster: th...
In Bayesian phylogenetic inference, marginal likelihoods can be estimated using several different me...
Emerging many-core computer architectures provide an incentive for computational methods to exhibit ...
Abstract. In large-scale genomic applications vast numbers of molecular features are scanned in orde...
Background Bayesian networks are directed acyclic graphical models widely used to represent the prob...
As genomic sequence data becomes increasingly available, inferring the phylogeny of the species as t...
Abstract Genomic selection uses genome-wide dense SNP marker genotyping for the prediction of geneti...
This thesis is focused on the development of computationally efficient procedures for regression mod...
Bayesian inference is widely used nowadays and relies largely on Markov chain Monte Carlo (MCMC) met...
Advances in sequencing technology continue to deliver increasingly large molecular sequence data set...