首页> 外文期刊>Evolution: International Journal of Organic Evolution >Implications of uniformly distributed, empirically informed priors for phylogeographical model selection: A reply to Hickerson et al.
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Implications of uniformly distributed, empirically informed priors for phylogeographical model selection: A reply to Hickerson et al.

机译:统一分布,经验依据的先验对系统地理学模型选择的影响:对Hickerson等人的答复。

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Establishing that a set of population-splitting events occurred at the same time can be a potentially persuasive argument that a common process affected the populations. Recently, Oaks etal. () assessed the ability of an approximate-Bayesian model-choice method (msBayes) to estimate such a pattern of simultaneous divergence across taxa, to which Hickerson etal. () responded. Both papers agree that the primary inference enabled by the method is very sensitive to prior assumptions and often erroneously supports shared divergences across taxa when prior uncertainty about divergence times is represented by a uniform distribution. However, the papers differ about the best explanation and solution for this problem. Oaks etal. () suggested the method's behavior was caused by the strong weight of uniformly distributed priors on divergence times leading to smaller marginal likelihoods (and thus smaller posterior probabilities) of models with more divergence-time parameters (Hypothesis 1); they proposed alternative prior probability distributions to avoid such strongly weighted posteriors. Hickerson etal. () suggested numerical-approximation error causes msBayes analyses to be biased toward models of clustered divergences because the method's rejection algorithm is unable to adequately sample the parameter space of richer models within reasonable computational limits when using broad uniform priors on divergence times (Hypothesis 2). As a potential solution, they proposed a model-averaging approach that uses narrow, empirically informed uniform priors. Here, we use analyses of simulated and empirical data to demonstrate that the approach of Hickerson etal. () does not mitigate the method's tendency to erroneously support models of highly clustered divergences, and is dangerous in the sense that the empirically derived uniform priors often exclude from consideration the true values of the divergence-time parameters. Our results also show that the tendency of msBayes analyses to support models of shared divergences is primarily due to Hypothesis 1, whereas Hypothesis 2 is an untenable explanation for the bias. Overall, this series of papers demonstrates that if our prior assumptions place too much weight in unlikely regions of parameter space such that the exact posterior supports the wrong model of evolutionary history, no amount of computation can rescue our inference. Fortunately, as predicted by fundamental principles of Bayesian model choice, more flexible distributions that accommodate prior uncertainty about parameters without placing excessive weight in vast regions of parameter space with low likelihood increase the method's robustness and power to detect temporal variation in divergences.
机译:确定一组同时发生的人口分裂事件可能是一个有说服力的论点,即一个共同的过程影响了这些人口。最近,奥克斯等人。 ()评估了近似贝叶斯模型选择方法(msBayes)的能力,以评估这种跨类群同时发散的模式,Hickerson等人对此进行了研究。 ()回应。这两篇论文都认为,该方法启用的主要推论对先前的假设非常敏感,并且当先前关于发散时间的不确定性由均匀分布表示时,通常会错误地支持整个分类群的共同发散。但是,关于此问题的最佳解释和解决方案,论文有所不同。奥克斯等人。 ()提出,该方法的行为是由于发散时间上均匀分布的先验分量的权重较大,导致具有更多发散时间参数的模型的边际可能性更小(因此,后验概率也更小)(假设1);他们提出了替代的先验概率分布来避免这种强加权的后验。希克森等。 ()建议的数值逼近误差导致msBayes分析偏向于集群发散模型,因为当对发散时间使用较宽的均匀先验时,该方法的拒绝算法无法在合理的计算范围内充分采样较丰富的模型的参数空间(假设2) 。作为一种潜在的解决方案,他们提出了一种模型平均方法,该方法使用狭窄的,经验丰富的统一先验知识。在这里,我们使用对模拟和经验数据的分析来证明Hickerson等人的方法。 ()不会减轻该方法错误地支持高度聚类散度模型的趋势,并且在从经验得出的统一先验经常将散度时间参数的真实值排除在外的意义上是危险的。我们的结果还表明,msBayes分析支持共享差异模型的趋势主要归因于假设1,而假设2则无法解释这种偏见。总的来说,这一系列论文表明,如果我们先前的假设在参数空间的不太可能的区域中放置了过多的权重,使得确切的后验支持错误的进化历史模型,那么没有大量的计算可以挽救我们的推论。幸运的是,正如贝叶斯模型选择的基本原理所预测的那样,更灵活的分布可容纳先前的参数不确定性,而不会在参数空间的广大区域中施加过大的权重,且可能性很小,从而提高了该方法的稳健性和检测散度随时间变化的能力。

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