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Estimating morphological diversity and tempo with discrete character-taxon matrices : implementation, challenges, progress, and future directions

机译:使用离散特征分类矩阵估计形态多样性和速度:实现,挑战,进展和未来方向

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摘要

Discrete character-taxon matrices are increasingly being used in an attempt to understand the pattern and tempo of morphological evolution; however, methodological sophistication and bespoke software implementations have lagged behind. In the present study, an attempt is made to provide a state-of-the-art description of methodologies and introduce a new R package (Claddis) for performing foundational disparity (morphologic diversity) and rate calculations. Simulations using its core functions show that: (1) of the two most commonly used distance metrics (Generalized Euclidean Distance and Gower's Coefficient), the latter tends to carry forward more of the true signal; (2) a novel distance metric may improve signal retention further; (3) this signal retention may come at the cost of pruning incomplete taxa from the data set; and (4) the utility of bivariate plots of ordination spaces are undermined by their frequently extremely low variances. By contrast, challenges to estimating morphologic tempo are presented qualitatively, such as how trees are time-scaled and changes are counted. Both disparity and rates deserve better time series approaches that could unlock new macroevolutionary analyses. However, these challenges need not be fatal, and several potential future solutions and directions are suggested.
机译:越来越多地使用离散字符分类矩阵来理解形态演化的模式和速度。但是,方法的复杂性和定制的软件实现却落后了。在当前的研究中,试图提供一种最新的方法学描述,并引入一个新的R包(Claddis)来执行基础视差(形态多样性)和费率计算。利用其核心功能进行的仿真表明:(1)在两个最常用的距离度量(广义欧几里得距离和高尔系数)中,后者趋向于传递更多真实信号; (2)一种新颖的距离度量可以进一步改善信号保留; (3)此信号保留可能会以修剪数据集中不完整的分类单元为代价; (4)排序空间的双变量图的实用性经常因其极低的方差而受到损害。相比之下,定性地提出了估计形态速度的挑战,例如如何对树进行时间缩放和对变化进行计数。差异和比率都应采用更好的时间序列方法,从而可以开展新的宏观进化分析。但是,这些挑战并不一定是致命的,因此提出了一些潜在的未来解决方案和方向。

著录项

  • 作者

    Lloyd, Graeme T;

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  • 年度 2016
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  • 原文格式 PDF
  • 正文语种 eng
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