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A General and Efficient Algorithm for the Likelihood of Diversification and Discrete-Trait Evolutionary Models

机译:多样化与离散性状展位模型的一般高效算法

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摘要

As the size of phylogenetic trees and comparative data continue to grow and more complex models are developed to investigate the processes that gave rise to them, macroevolutionary analyses are becoming increasingly limited by computational requirements. Here, we introduce a novel algorithm, based on the "flow" of the differential equations that describe likelihoods along tree edges in backward time, to reduce redundancy in calculations and efficiently compute the likelihood of various macroevolutionary models. Our algorithm applies to several diversification models, including birth-death models and models that account for state- or time-dependent rates, as well as many commonly used models of discrete-trait evolution, and provides an alternative way to describe macroevolutionary model likelihoods. As a demonstration of our algorithm's utility, we implemented it for a popular class of state-dependent diversification models-BiSSE, MuSSE, and their extensions to hidden-states. Our implementation is available through the R package . We show that, for these models, our algorithm is one or more orders of magnitude faster than existing implementations when applied to large phylogenies. Our algorithm thus enables the fitting of state-dependent diversification models to modern massive phylogenies with millions of tips and may lead to potentially similar computational improvements for many other macroevolutionary models.
机译:随着系统发育树和比较数据的规模继续增长,并且开发出更复杂的模型以研究产生了对它们的过程,即可通过计算要求变得越来越受限。这里,我们基于沿着树边缘的差分方程的“流动”介绍一种新颖的算法,以减少计算中的冗余,有效地计算各种宏观调度模型的可能性。我们的算法适用于几种多样化模型,包括出生死亡模型和模型,该模型占依赖率或时间依赖的速率,以及许多常用的离散特质演化模型,并提供了描述宏观调度模型可能性的替代方法。作为我们算法的实用程序的演示,我们为一个流行的国家依赖多样化模型 - Bisse,Masse及其扩展到隐藏状态来实现它。我们的实现可通过R包提供。我们表明,对于这些模型,我们的算法是在应用于大文学发生时的现有实现的速度快的一个或多个数量级。因此,我们的算法使得具有数百万个尖端的现代大规模化学模型的算法能够与现代尖端拟合,并且可能导致许多其他宏观调度模型的潜在类似的计算改进。

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