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Using decision trees to study the convergence of phylogenetic analyses

机译:使用决策树研究系统进化分析的收敛性

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In this paper, we explore the novel use of decision trees to study the convergence properties of phylogenetic analyses. A decision learning tree is constructed from the evolutionary relationships (or bipartitions) found in the evolutionary trees returned from a phylogenetic analysis. We treat evolutionary trees returned from multiple runs of a phylogenetic analysis as different classes. Then, we use the depth of a decision tree as a technique to measure how distinct the runs are from each other. Decision trees with shallow depth reflect non-convergence since the evolutionary trees can be classified with little information. Deep decision tree depths reflect convergence. We study Bayesian and maximum parsimony phylogenetic analyses consisting of thousands of trees. For some datasets studied here, a single distinguishing bipartition can classify the entire tree collection suggesting non-convergence of the underlying phylogenetic analysis. Thus, we believe that decision trees lead to new insights with the potential for helping biologists reconstruct more robust evolutionary trees.
机译:在本文中,我们探索了决策树在研究系统进化分析的收敛性方面的新颖用途。根据从系统发育分析返回的进化树中发现的进化关系(或二分法)构建决策学习树。我们将从系统进化分析的多次运行中返回的进化树视为不同的类。然后,我们将决策树的深度作为一种技术来衡量运行之间的区别。深度较浅的决策树反映出非收敛性,因为进化树可以用很少的信息进行分类。决策树的深度反映了收敛性。我们研究由数千棵树组成的贝叶斯和最大简约系统发育分析。对于此处研究的某些数据集,单个可区分的分区可以对整个树集合进行分类,这表明基础系统发育分析不收敛。因此,我们认为决策树会带来新的见解,并有可能帮助生物学家重建更健壮的进化树。

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