Summary: A key element to a successful Markov chain Monte Carlo (MCMC) inference is the programming and run performance of the Markov chain. However, the explicit use of quality assessments of the MCMC simulations—convergence diagnostics—in phyloge-netics is still uncommon. Here, we present a simple tool that uses the output from MCMC simulations and visualizes a number of properties of primary interest in a Bayesian phylogenetic analysis, such as convergence rates of posterior split probabilities and branch lengths. Graphical exploration of the output from phylogenetic MCMC simulations gives intuitive and often crucial information on the success and reliability of the analysis. The tool presented here complements convergence diagnostics al...
Sampling across tree space is one of the major challenges in Bayesian phylogenetic inference using M...
A main task in evolutionary biology is phylogenetic tree reconstruction, which determines the ancest...
Modern infectious disease outbreak surveillance produces continuous streams of sequence data which r...
Summary: A key element to a successful Markov chain Monte Carlo (MCMC) inference is the programming ...
Nearly all current Bayesian phylogenetic applications rely on Markov chain Monte Carlo (MCMC) method...
Bayesian inference of phylogeny using Markov chain Monte Carlo (MCMC) plays a central role in unders...
Nearly all current Bayesian phylogenetic applications rely on Markov chain Monte Carlo (MCMC) method...
Bayesian methods have become very popular in molecular phylogenetics due to the availability of user...
Bayesian phylogenetic analyses estimate posterior distributions of phylogenetic tree topologies and ...
Markov chain Monte Carlo (MCMC) is a methodology that is gaining widespread use in the phylogenetics...
Bayesian phylogenetic analyses estimate posterior distributions of phylogenetic tree topologies and ...
In order to gain an understanding of the effectiveness of phylogenetic Markov chain Monte Carlo (MCM...
Bayesian inference provides an appealing general framework for phylogenetic analysis, able to incorp...
Abstract.—Bayesian inference provides an appealing general framework for phylogenetic analysis, able...
Phylogenetic inference is an intractable statistical problem on a complex space. Markov chain Monte ...
Sampling across tree space is one of the major challenges in Bayesian phylogenetic inference using M...
A main task in evolutionary biology is phylogenetic tree reconstruction, which determines the ancest...
Modern infectious disease outbreak surveillance produces continuous streams of sequence data which r...
Summary: A key element to a successful Markov chain Monte Carlo (MCMC) inference is the programming ...
Nearly all current Bayesian phylogenetic applications rely on Markov chain Monte Carlo (MCMC) method...
Bayesian inference of phylogeny using Markov chain Monte Carlo (MCMC) plays a central role in unders...
Nearly all current Bayesian phylogenetic applications rely on Markov chain Monte Carlo (MCMC) method...
Bayesian methods have become very popular in molecular phylogenetics due to the availability of user...
Bayesian phylogenetic analyses estimate posterior distributions of phylogenetic tree topologies and ...
Markov chain Monte Carlo (MCMC) is a methodology that is gaining widespread use in the phylogenetics...
Bayesian phylogenetic analyses estimate posterior distributions of phylogenetic tree topologies and ...
In order to gain an understanding of the effectiveness of phylogenetic Markov chain Monte Carlo (MCM...
Bayesian inference provides an appealing general framework for phylogenetic analysis, able to incorp...
Abstract.—Bayesian inference provides an appealing general framework for phylogenetic analysis, able...
Phylogenetic inference is an intractable statistical problem on a complex space. Markov chain Monte ...
Sampling across tree space is one of the major challenges in Bayesian phylogenetic inference using M...
A main task in evolutionary biology is phylogenetic tree reconstruction, which determines the ancest...
Modern infectious disease outbreak surveillance produces continuous streams of sequence data which r...