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Relaxed Random Walks at Scale

Authors :
Zhenyu Zhang
Alexander A. Fisher
Philippe Lemey
Marc A. Suchard
Xiang Ji
Holder, Mark
Source :
Systematic biology, vol 70, iss 2, Syst Biol
Publication Year :
2021
Publisher :
OXFORD UNIV PRESS, 2021.

Abstract

Relaxed random walk (RRW) models of trait evolution introduce branch-specific rate multipliers to modulate the variance of a standard Brownian diffusion process along a phylogeny and more accurately model overdispersed biological data. Increased taxonomic sampling challenges inference under RRWs as the number of unknown parameters grows with the number of taxa. To solve this problem, we present a scalable method to efficiently fit RRWs and infer this branch-specific variation in a Bayesian framework. We develop a Hamiltonian Monte Carlo (HMC) sampler to approximate the high-dimensional, correlated posterior that exploits a closed-form evaluation of the gradient of the trait data log-likelihood with respect to all branch-rate multipliers simultaneously. Our gradient calculation achieves computational complexity that scales only linearly with the number of taxa under study. We compare the efficiency of our HMC sampler to the previously standard univariable Metropolis-Hastings approach while studying the spatial emergence of the West Nile virus in North America in the early 2000s. Our method achieves at least a 6-fold speed increase over the univariable approach. Additionally, we demonstrate the scalability of our method by applying the RRW to study the correlation between five mammalian life history traits in a phylogenetic tree with $3650$ tips.[Bayesian inference; BEAST; Hamiltonian Monte Carlo; life history; phylodynamics, relaxed random walk.]. ispartof: SYSTEMATIC BIOLOGY vol:70 issue:2 pages:258-267 ispartof: location:England status: published

Details

Language :
English
Database :
OpenAIRE
Journal :
Systematic biology, vol 70, iss 2, Syst Biol
Accession number :
edsair.doi.dedup.....db466c40f0184db451940a925bc59bcb