A Multi-Criterion Evolutionary Approach Applied to Phylogenetic Reconstruction

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Cancino, W.; Delbem, A.C.B.;
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In this paper, we proposed an MOEA approach, called PhyloMOEA which solves the phylogenetic inference problem using maximum parsimony and maximum likelihood criteria. The PhyloMOEA's development was motivated by several studies in the literature (Huelsenbeck, 1995; Jin ... View more
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