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On the convergence of the maximum likelihood estimator for the transition rate under a 2-state symmetric model

机译:2态对称模型下过渡率的最大似然估计的收敛性研究

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Maximum likelihood estimators are used extensively to estimate unknown parameters of stochastic trait evolution models on phylogenetic trees. Although the MLE has been proven to converge to the true value in the independent-sample case, we cannot appeal to this result because trait values of different species are correlated due to shared evolutionary history. In this paper, we consider a 2-state symmetric model for a single binary trait and investigate the theoretical properties of the MLE for the transition rate in the large-tree limit. Here, the large-tree limit is a theoretical scenario where the number of taxa increases to infinity and we can observe the trait values for all species. Specifically, we prove that the MLE converges to the true value under some regularity conditions. These conditions ensure that the tree shape is not too irregular, and holds for many practical scenarios such as trees with bounded edges, trees generated from the Yule (pure birth) process, and trees generated from the coalescent point process. Our result also provides an upper bound for the distance between the MLE and the true value.
机译:最大似然估计是广泛使用的,以估计系统发育树上随机性状进化模型的未知参数。虽然Mle已被证明在独立样本案例中融合到真实值,但我们无法吸引这种结果,因为不同物种的特质价值由于共同的进化历史而相关。在本文中,我们考虑了一个二进制特征的2状态对称模型,并研究了大树限制中的过渡率的MLE的理论特性。在这里,大树限制是一个理论场景,其中分类群的数量增加到无限远,我们可以观察所有物种的特征价值。具体而言,我们证明了MLE在一些规律性条件下收敛到真实值。这些条件确保树形形状不太不规则,并且诸如诸如树木的许多实际场景,与界边缘,从yule(纯出生)的树木产生的树木,以及从聚结点过程产生的树木。我们的结果也为MLE与真值与真值之间的距离提供了一个上限。

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