| Literature DB >> 21471560 |
P M Huggins1, W Li, D Haws, T Friedrich, J Liu, R Yoshida.
Abstract
Tree reconstruction methods are often judged by their accuracy, measured by how close they get to the true tree. Yet, most reconstruction methods like maximum likelihood (ML) do not explicitly maximize this accuracy. To address this problem, we propose a Bayesian solution. Given tree samples, we propose finding the tree estimate that is closest on average to the samples. This "median" tree is known as the Bayes estimator (BE). The BE literally maximizes posterior expected accuracy, measured in terms of closeness (distance) to the true tree. We discuss a unified framework of BE trees, focusing especially on tree distances that are expressible as squared euclidean distances. Notable examples include Robinson-Foulds (RF) distance, quartet distance, and squared path difference. Using both simulated and real data, we show that BEs can be estimated in practice by hill-climbing. In our simulation, we find that BEs tend to be closer to the true tree, compared with ML and neighbor joining. In particular, the BE under squared path difference tends to perform well in terms of both path difference and RF distances.Entities:
Mesh:
Year: 2011 PMID: 21471560 PMCID: PMC3114872 DOI: 10.1093/sysbio/syr021
Source DB: PubMed Journal: Syst Biol ISSN: 1063-5157 Impact factor: 15.683