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Improved Reversible Jump Algorithms for Bayesian Species Delimitation

机译:贝叶斯物种划界的改进可逆跳跃算法

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摘要

Several computational methods have recently been proposed for delimiting species using multilocus sequence data. Among them, the Bayesian method of Yang and Rannala uses the multispecies coalescent model in the likelihood framework to calculate the posterior probabilities for the different species-delimitation models. It has a sound statistical basis and is found to have nice statistical properties in simulation studies, such as low error rates of undersplitting and oversplitting. However, the method suffers from poor mixing of the reversible-jump Markov chain Monte Carlo (rjMCMC) algorithms. Here, we describe several modifications to the algorithms. We propose a flexible prior that allows the user to specify the probability that each node on the guide tree represents a true speciation event. We also introduce modifications to the rjMCMC algorithms that remove the constraint on the new species divergence time when splitting and alter the gene trees to remove incompatibilities. The new algorithms are found to improve mixing of the Markov chain for both simulated and empirical data sets.
机译:最近已经提出了几种使用多基因座序列数据来划定物种的计算方法。其中,Yang和Rannala的贝叶斯方法在似然框架中使用了多物种合并模型来计算不同物种界定模型的后验概率。它具有良好的统计基础,并且在模拟研究中被发现具有良好的统计特性,例如低分割和过分割的错误率低。然而,该方法遭受可逆跳跃马尔可夫链蒙特卡罗(rjMCMC)算法混合不良的困扰。在这里,我们描述了对算法的几种修改。我们提出了一种灵活的先验,它允许用户指定向导树上每个节点代表一个真实物种形成事件的概率。我们还介绍了对rjMCMC算法的修改,这些修改消除了拆分时对新物种发散时间的限制,并更改了基因树以消除不兼容性。发现新算法改善了模拟和经验数据集的马尔可夫链的混合。

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