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Updated: Feb 8, 2026

A Practical Guide to Phylogenetics for Nonexperts
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Model Selection and Parameter Inference in Phylogenetics Using Nested Sampling.

Patricio Maturana Russel1, Brendon J Brewer1, Steffen Klaere1,2

  • 1Department of Statistics, The University of Auckland, Auckland, New Zealand.

Systematic Biology
|July 3, 2018
PubMed
Summary
This summary is machine-generated.

Nested sampling (NS) offers a unified Bayesian computation approach for phylogenetic inference, efficiently estimating marginal likelihoods and posterior distributions. This method proves competitive and attractive for evolutionary analyses.

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Area of Science:

  • Computational Biology
  • Evolutionary Biology
  • Bayesian Statistics

Background:

  • Bayesian inference in phylogenetics often requires significant computational resources for model selection and parameter estimation.
  • Estimating marginal likelihood for model comparison and posterior distributions for parameter inference are computationally intensive challenges.
  • Current methods for marginal likelihood estimation in phylogenetics can be impractical due to tuning parameter dependence and lack of uncertainty quantification.

Purpose of the Study:

  • Introduce Nested Sampling (NS), a Bayesian computation algorithm, to the field of phylogenetics.
  • Evaluate the performance of NS in phylogenetic inference scenarios.
  • Compare NS with established methods for phylogenetic analysis.

Main Methods:

  • Nested Sampling (NS) algorithm applied to phylogenetic inference.
  • Analysis of NS performance across various evolutionary scenarios.
  • Comparative study against existing phylogenetic inference techniques.

Main Results:

  • Nested Sampling (NS) provides a unified approach to estimate marginal likelihoods and sample from posterior distributions simultaneously.
  • NS demonstrates competitive performance in phylogenetic inference tasks.
  • The algorithm offers a practical alternative to existing methods, addressing limitations in parameter tuning and uncertainty estimation.

Conclusions:

  • Nested Sampling (NS) is a practical and computationally efficient algorithm for phylogenetic inference.
  • NS is a competitive and attractive method for estimating marginal likelihoods and posterior distributions in phylogenetics.
  • An open-source implementation of NS for BEAST 2 is available.