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Auteurs principaux: Kirichenko, Alisa, Kelly, Luke J., Koskela, Jere
Format: Preprint
Publié: 2025
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Accès en ligne:https://arxiv.org/abs/2508.00995
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author Kirichenko, Alisa
Kelly, Luke J.
Koskela, Jere
author_facet Kirichenko, Alisa
Kelly, Luke J.
Koskela, Jere
contents We derive tractable criteria for the consistency of Bayesian tree reconstruction procedures, which constitute a central class of algorithms for inferring common ancestry among DNA sequence samples in phylogenetics. Our results encompass several Bayesian algorithms in widespread use, such as BEAST, MrBayes, and RevBayes. Unlike essentially all existing asymptotic guarantees for tree reconstruction, we require no discretization or boundedness assumptions on branch lengths. Our results are also very flexible, and easy to adapt to variations of the underlying inference problem. We demonstrate the practicality of our criteria on two examples: a Kingman coalescent prior on rooted, ultrametric trees, and an independence prior on unconstrained binary trees, though we emphasize that our result also applies to non-binary tree models. In both cases, the convergence rate we obtain matches known, frequentist results obtained using stronger boundedness assumptions, up to logarithmic factors.
format Preprint
id arxiv_https___arxiv_org_abs_2508_00995
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Asymptotic guarantees for Bayesian phylogenetic tree reconstruction
Kirichenko, Alisa
Kelly, Luke J.
Koskela, Jere
Statistics Theory
Methodology
We derive tractable criteria for the consistency of Bayesian tree reconstruction procedures, which constitute a central class of algorithms for inferring common ancestry among DNA sequence samples in phylogenetics. Our results encompass several Bayesian algorithms in widespread use, such as BEAST, MrBayes, and RevBayes. Unlike essentially all existing asymptotic guarantees for tree reconstruction, we require no discretization or boundedness assumptions on branch lengths. Our results are also very flexible, and easy to adapt to variations of the underlying inference problem. We demonstrate the practicality of our criteria on two examples: a Kingman coalescent prior on rooted, ultrametric trees, and an independence prior on unconstrained binary trees, though we emphasize that our result also applies to non-binary tree models. In both cases, the convergence rate we obtain matches known, frequentist results obtained using stronger boundedness assumptions, up to logarithmic factors.
title Asymptotic guarantees for Bayesian phylogenetic tree reconstruction
topic Statistics Theory
Methodology
url https://arxiv.org/abs/2508.00995