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Multi-Criterion Phylogenetic Inference using Evolutionary Algorithms

机译:基于进化算法的多准则系统进化论

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Various phylogenetic reconstruction methods have been proposed in order to determine the most accurate tree that represents evolutionary relationships among species. Each method defines a criterion for evaluation of possible solutions. This criterion leads the search to the best phylogenetic tree. However, different criteria may lead to distinct phylogenies, which often conflict with each other. In this context, a multi-objective approach can be useful since it could produce a set of optimal trees (Pareto front) according to multiple criteria. We propose a multi-objective evolutionary algorithm, called Phylo-MOEA, which is focused on maximum parsimony and maximum likelihood criteria. In experiments, several PhyloMOEA trials were performed using four datasets of nucleotide sequences. For each dataset, the proposed algorithm found a Pareto front representing a trade-off between the criteria used. Moreover, SH-test showed that a number of solutions from PhyloMOEA are not significantly worse than solutions found by phylogenetic programs using one criterion
机译:为了确定代表物种间进化关系的最准确的树,已经提出了各种系统发育重建方法。每种方法都定义了评估可能解决方案的标准。该标准导致搜索到最佳的系统发育树。但是,不同的标准可能会导致不同的系统发育,常常相互冲突。在这种情况下,多目标方法可能很有用,因为它可以根据多个标准生成一组最佳树(Pareto前沿)。我们提出了一种称为Phylo-MOEA的多目标进化算法,该算法专注于最大简约性和最大似然准则。在实验中,使用四个核苷酸序列数据集进行了多次PhyloMOEA试验。对于每个数据集,所提出的算法都找到了一个Pareto前沿,代表了所使用标准之间的折衷。此外,SH测试表明,PhyloMOEA的许多解决方案并不比使用一种标准的系统发育程序发现的解决方案差很多

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