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Fast likelihood calculation for multivariate Gaussian phylogenetic models with shifts

机译:多变量高斯系统发育模型的快速似然计算

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Phylogenetic comparative methods (PCMs) have been used to study the evolution of quantitative traits in various groups of organisms, ranging from micro-organisms to animal and plant species. A common approach has been to assume a Gaussian phylogenetic model for the trait evolution along the tree, such as a branching Brownian motion (BM) or an Ornstein-Uhlenbeck (OU) process. Then, the parameters of the process have been inferred based on a given tree and trait data for the sampled species. At the heart of this inference lie multiple calculations of the model likelihood, that is, the probability density of the observed trait data, conditional on the model parameters and the tree. With the increasing availability of big phylogenetic trees, spanning hundreds to several thousand sampled species, this approach is facing a two-fold challenge. First, the assumption of a single Gaussian process governing the entire tree is not adequate in the presence of heterogeneous evolutionary forces acting in different parts of the tree. Second, big trees present a computational challenge, due to the time and memory complexity of the model likelihood calculation.
机译:已经使用系统发育比较方法(PCM)来研究各种生物组中的定量性状的演变,从微生物到动物和植物物种。一种常见的方法是假设沿树的特质演化的高斯文学模型,例如分支褐色运动(BM)或Ornstein-Uhlenbeck(OU)过程。然后,已经基于给定的树和用于采样物种的特征数据推断出该过程的参数。在该推理的核心,暗示模型可能性的多重计算,即观察到的特征数据的概率密度,在模型参数和树上条件。随着大豆发育树的增加,跨越数百至数千种样品,这种方法面临着两倍的挑战。首先,针对整个树的单个高斯过程的假设在存在于树木不同部分的异质进化力存在下不充分。其次,大树呈现了计算挑战,由于模型似然计算的时间和内存复杂性。

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