Bayesian inference methods rely on numerical algorithms for both model selection and parameter inference. In general, these algorithms require a high computational effort to yield reliable estimates. One of the major challenges in phylogenetics is the estimation of the marginal likelihood. This quantity is commonly used for comparing different evolutionary models, but its calculation, even for simple models, incurs high computational cost. Another interesting challenge relates to the estimation of the posterior distribution. Often, long Markov chains are required to get sufficient samples to carry out parameter inference, especially for tree distributions. In general, these problems are addressed separately by using different procedures. Ne...
It is widely accepted that species diversified in a tree like pattern from a common descendant and t...
We present two distinctly different posterior predictive approaches to Bayesian phylogenetic model s...
Bayesian phylogenetic inference involves sampling from posterior distributions of trees, which somet...
Bayesian inference methods rely on numerical algorithms for both model selection and parameter infer...
By providing a framework of accounting for the shared ancestry inherent to all life, phylogenetics i...
Marginal likelihood estimates to compare models using Bayes factors frequently accompany Bayesian ph...
Marginal likelihood estimates to compare models using Bayes factors frequently accompany Bayesian ph...
Bayesian statistics uses probability distributions to characterize uncertainties in parameters or mo...
Abstract.—The marginal likelihood is commonly used for comparing different evolutionary models in Ba...
Bayesian phylogenetic methods are generating noticeable enthusiasm in the field of molecular systema...
The Bayes factor is commonly used for comparing different evolutionary rate models and different top...
Abstract.—The marginal likelihood is commonly used for comparing different evolutionary models in Ba...
The recent development of Bayesian phylogenetic inference using Markov chain Monte Carlo (MCMC) tech...
Abstract. — Phylogenetic estimation has largely come to rely on explicitly model-based methods. This...
In this chapter, we discuss recent advances in the field of Bayesian model testing and focus on meth...
It is widely accepted that species diversified in a tree like pattern from a common descendant and t...
We present two distinctly different posterior predictive approaches to Bayesian phylogenetic model s...
Bayesian phylogenetic inference involves sampling from posterior distributions of trees, which somet...
Bayesian inference methods rely on numerical algorithms for both model selection and parameter infer...
By providing a framework of accounting for the shared ancestry inherent to all life, phylogenetics i...
Marginal likelihood estimates to compare models using Bayes factors frequently accompany Bayesian ph...
Marginal likelihood estimates to compare models using Bayes factors frequently accompany Bayesian ph...
Bayesian statistics uses probability distributions to characterize uncertainties in parameters or mo...
Abstract.—The marginal likelihood is commonly used for comparing different evolutionary models in Ba...
Bayesian phylogenetic methods are generating noticeable enthusiasm in the field of molecular systema...
The Bayes factor is commonly used for comparing different evolutionary rate models and different top...
Abstract.—The marginal likelihood is commonly used for comparing different evolutionary models in Ba...
The recent development of Bayesian phylogenetic inference using Markov chain Monte Carlo (MCMC) tech...
Abstract. — Phylogenetic estimation has largely come to rely on explicitly model-based methods. This...
In this chapter, we discuss recent advances in the field of Bayesian model testing and focus on meth...
It is widely accepted that species diversified in a tree like pattern from a common descendant and t...
We present two distinctly different posterior predictive approaches to Bayesian phylogenetic model s...
Bayesian phylogenetic inference involves sampling from posterior distributions of trees, which somet...