Total Evidence, Average Consensus and Matrix Representation with Parsimony: What a Difference Distances Make

Claudine Levasseur, F. Lapointe
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引用次数: 14

Abstract

Matrix representation with parsimony (MRP) can be used to combine trees in the supertree or the consensus settings. However, despite its popularity, it is still unclear whether MRP is really a consensus method or whether it behaves more like the total evidence approach. Previous simulations have shown that it approximates total evidence trees, whereas other studies have depicted similarities with average consensus trees. In this paper, we assess the hypothesis that MRP is equally related to both approaches. We conducted a simulation study to evaluate the accuracy of total evidence with that or various consensus methods, including MRP. Our results show that the total evidence trees are not significantly more accurate than average consensus trees that accounts for branch lengths, but that both perform better than MRP trees in the consensus setting. The accuracy rate of all methods was similarly affected by the number of taxa, the number of partitions, and the heterogeneity of the data.
总证据、平均共识和简约的矩阵表示:距离的差异
具有简约性的矩阵表示(MRP)可以用于组合超树中的树或一致性设置。然而,尽管它很受欢迎,但尚不清楚MRP是否真的是一种共识方法,或者它是否更像全证据方法。先前的模拟表明,它近似于总证据树,而其他研究则描述了与平均共识树的相似性。在本文中,我们评估假设,MRP是同等相关的两种方法。我们进行了一项模拟研究,以评估总证据与各种共识方法的准确性,包括MRP。我们的结果表明,总的证据树并不比考虑分支长度的平均共识树更准确,但在共识设置中,它们都比MRP树表现得更好。所有方法的准确率同样受到类群数量、分区数量和数据异质性的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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