Authors
Jennifer Ripplinger, Jack Sullivan
Publication date
2008/2/1
Journal
Systematic biology
Volume
57
Issue
1
Pages
76-85
Publisher
Oxford University Press
Description
In order to have confidence in model-based phylogenetic analysis, the model of nucleotide substitution adopted must be selected in a statistically rigorous manner. Several model-selection methods are applicable to maximum likelihood (ML) analysis, including the hierarchical likelihood-ratio test (hLRT), Akaike information criterion (AIC), Bayesian information criterion (BIC), and decision theory (DT), but their performance relative to empirical data has not been investigated thoroughly. In this study, we use 250 phylogenetic data sets obtained from TreeBASE to examine the effects that choice in model selection has on ML estimation of phylogeny, with an emphasis on optimal topology, bootstrap support, and hypothesis testing. We show that the use of different methods leads to the selection of two or more models for ∼ 80% of the data sets and that the AIC typically selects more complex models than alternative …
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