We observe n sequences at each of m sites, and assume that they have evolved from an ancestral sequence that forms the root of a binary tree of known topology and branch lengths, but the sequence states at internal nodes are unknown. The topology of the tree and branch lengths are the same for all sites, but the parameters of the evolutionary model can vary over sites. We assume a piecewise constant model for these parameters, with an unknown number of change-points and hence a trans-dimensional parameter space over which we seek to perform Bayesian inference. We propose two novel ideas to deal with the computational challenges of such inference. Firstly, we approximate the model based on the time machine principle: the top nodes of the bin...
This paper studies gene trees in subdivided populations which are constructed as perfect phylogenies...
Motivation: Brownian models have been introduced in phylogenetics for describing variation in substi...
Abstract Motivation Bayesian inference is widely used nowadays and relies largely on Markov chain Mo...
We observe n sequences at each of m sites and assume that they have evolved from an ancestral sequen...
This article is organized as follows: Section 2 opens with an introduction to the requisite terminol...
A main task in evolutionary biology is phylogenetic tree reconstruction, which determines the ancest...
Talk given at Evolution 2016 in the SSB Spotlight: Next generation phylogenetic inference 1. Evolu...
<p>Talk given at Evolution 2016 in the SSB Spotlight: Next generation phylogenetic inference 1.</p> ...
Recently reconstructing evolutionary histories has become a computational issue due to the increased...
Recently reconstructing evolutionary histories has become a computational issue due to the increased...
Abstract Background Bayesian MCMC has become a common approach for phylogenetic inference. But the g...
Phylogenetic models with lineage-specific parameter characterizations provide a flexible framework t...
Phylogenetic models with lineage-specific parameter characterizations provide a flexible framework t...
Phylogenetic trees describe the relationships between species in the evolutionary process, and provi...
Monte Carlo methods have emerged as standard tools to do Bayesian statistical inference for sophisti...
This paper studies gene trees in subdivided populations which are constructed as perfect phylogenies...
Motivation: Brownian models have been introduced in phylogenetics for describing variation in substi...
Abstract Motivation Bayesian inference is widely used nowadays and relies largely on Markov chain Mo...
We observe n sequences at each of m sites and assume that they have evolved from an ancestral sequen...
This article is organized as follows: Section 2 opens with an introduction to the requisite terminol...
A main task in evolutionary biology is phylogenetic tree reconstruction, which determines the ancest...
Talk given at Evolution 2016 in the SSB Spotlight: Next generation phylogenetic inference 1. Evolu...
<p>Talk given at Evolution 2016 in the SSB Spotlight: Next generation phylogenetic inference 1.</p> ...
Recently reconstructing evolutionary histories has become a computational issue due to the increased...
Recently reconstructing evolutionary histories has become a computational issue due to the increased...
Abstract Background Bayesian MCMC has become a common approach for phylogenetic inference. But the g...
Phylogenetic models with lineage-specific parameter characterizations provide a flexible framework t...
Phylogenetic models with lineage-specific parameter characterizations provide a flexible framework t...
Phylogenetic trees describe the relationships between species in the evolutionary process, and provi...
Monte Carlo methods have emerged as standard tools to do Bayesian statistical inference for sophisti...
This paper studies gene trees in subdivided populations which are constructed as perfect phylogenies...
Motivation: Brownian models have been introduced in phylogenetics for describing variation in substi...
Abstract Motivation Bayesian inference is widely used nowadays and relies largely on Markov chain Mo...