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Split-based computation of majority-rule supertrees

机译:基于分割的多数规则超树计算

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Supertree methods combine overlapping input trees into a larger supertree. Here, I consider split-based supertree methods that first extract the split information of the input trees and subsequently combine this split information into a phylogeny. Well known split-based supertree methods are matrix representation with parsimony and matrix representation with compatibility. Combining input trees on the same taxon set, as in the consensus setting, is a well-studied task and it is thus desirable to generalize consensus methods to supertree methods. Here, three variants of majority-rule (MR) supertrees that generalize majority-rule consensus trees are investigated. I provide simple formulas for computing the respective score for bifurcating input- and supertrees. These score computations, together with a heuristic tree search minmizing the scores, were implemented in the python program PluMiST (Plus- and Minus SuperTrees) available from http://www.cibiv.at/software/plumist . The different MR methods were tested by simulation and on real data sets. The search heuristic was successful in combining compatible input trees. When combining incompatible input trees, especially one variant, MR(-) supertrees, performed well. The presented framework allows for an efficient score computation of three majority-rule supertree variants and input trees. I combined the score computation with a heuristic search over the supertree space. The implementation was tested by simulation and on real data sets and showed promising results. Especially the MR(-) variant seems to be a reasonable score for supertree reconstruction. Generalizing these computations to multifurcating trees is an open problem, which may be tackled using this framework.
机译:重树方法将重叠的输入树合并为更大的重树。在这里,我考虑基于分割的超级树方法,该方法首先提取输入树的分割信息,然后将该分割信息组合成系统发育树。众所周知的基于拆分的超树方法是具有简约性的矩阵表示和具有兼容性的矩阵表示。与共识设置中一样,在同一个分类单元上组合输入树是一项经过充分研究的任务,因此希望将共识方法推广到超树方法。在这里,研究了对多数规则共识树进行泛化的多数规则(MR)超树的三种变体。我提供了简单的公式来计算输入树和超级树的分值。这些分数计算,以及将分数最小化的启发式树搜索,在可从http://www.cibiv.at/software/plumist获得的python程序PluMiST(正负超级树)中实现。通过仿真和真实数据集测试了不同的MR方法。搜索启发式方法成功地组合了兼容的输入树。当组合不兼容的输入树时,特别是一种变体MR(-)超树表现良好。所提出的框架允许对三个多数规则超树变体和输入树进行有效的分数计算。我将分数计算与对超树空间的启发式搜索结合在一起。该实现已通过仿真和真实数据集进行了测试,并显示出令人鼓舞的结果。尤其是MR(-)变体似乎是超树重建的合理分数。将这些计算推广到多叉树是一个未解决的问题,可以使用此框架解决。

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