| Literature DB >> 29029199 |
Brian C Claywell1, Vu Dinh2, Mathieu Fourment3, Connor O McCoy1, Frederick A Matsen Iv1.
Abstract
Phylogenetics has seen a steady increase in data set size and substitution model complexity, which require increasing amounts of computational power to compute likelihoods. This motivates strategies to approximate the likelihood functions for branch length optimization and Bayesian sampling. In this article, we develop an approximation to the 1D likelihood function as parametrized by a single branch length. Our method uses a four-parameter surrogate function abstracted from the simplest phylogenetic likelihood function, the binary symmetric model. We show that it offers a surrogate that can be fit over a variety of branch lengths, that it is applicable to a wide variety of models and trees, and that it can be used effectively as a proposal mechanism for Bayesian sampling. The method is implemented as a stand-alone open-source C library for calling from phylogenetics algorithms; it has proven essential for good performance of our online phylogenetic algorithm sts.Keywords: Bayesian phylogenetics; phylogenetic likelihood; proposal distribution; surrogate function
Mesh:
Year: 2018 PMID: 29029199 PMCID: PMC5850616 DOI: 10.1093/molbev/msx253
Source DB: PubMed Journal: Mol Biol Evol ISSN: 0737-4038 Impact factor: 16.240