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      A likelihood approach to estimating phylogeny from discrete morphological character data.

      1
      Systematic biology
      Informa UK Limited

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          Abstract

          Evolutionary biologists have adopted simple likelihood models for purposes of estimating ancestral states and evaluating character independence on specified phylogenies; however, for purposes of estimating phylogenies by using discrete morphological data, maximum parsimony remains the only option. This paper explores the possibility of using standard, well-behaved Markov models for estimating morphological phylogenies (including branch lengths) under the likelihood criterion. An important modification of standard Markov models involves making the likelihood conditional on characters being variable, because constant characters are absent in morphological data sets. Without this modification, branch lengths are often overestimated, resulting in potentially serious biases in tree topology selection. Several new avenues of research are opened by an explicitly model-based approach to phylogenetic analysis of discrete morphological data, including combined-data likelihood analyses (morphology + sequence data), likelihood ratio tests, and Bayesian analyses.

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          Author and article information

          Journal
          Syst Biol
          Systematic biology
          Informa UK Limited
          1063-5157
          1063-5157
          July 16 2002
          : 50
          : 6
          Affiliations
          [1 ] Department of Ecology and Evolutionary Biology, University of Connecticut, Storrs, Connecticut 06269-3043, USA. paul.lewis@uconn.edu
          Article
          10.1080/106351501753462876
          12116640
          b7a38257-84c9-4357-96a9-e9e98fd6dc79
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