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Marginal Likelihood Estimate Comparisons to Obtain Optimal Species Delimitations in Silene sect. Cryptoneurae (Caryophyllaceae)

机译:边缘似然估计比较以获得最佳的物种界线。隐藻(石竹科)

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摘要

Coalescent-based inference of phylogenetic relationships among species takes into account gene tree incongruence due to incomplete lineage sorting, but for such methods to make sense species have to be correctly delimited. Because alternative assignments of individuals to species result in different parametric models, model selection methods can be applied to optimise model of species classification. In a Bayesian framework, Bayes factors (BF), based on marginal likelihood estimates, can be used to test a range of possible classifications for the group under study. Here, we explore BF and the Akaike Information Criterion (AIC) to discriminate between different species classifications in the flowering plant lineage Silene sect. Cryptoneurae (Caryophyllaceae). We estimated marginal likelihoods for different species classification models via the Path Sampling (PS), Stepping Stone sampling (SS), and Harmonic Mean Estimator (HME) methods implemented in BEAST. To select among alternative species classification models a posterior simulation-based analog of the AIC through Markov chain Monte Carlo analysis (AICM) was also performed. The results are compared to outcomes from the software BP&P. Our results agree with another recent study that marginal likelihood estimates from PS and SS methods are useful for comparing different species classifications, and strongly support the recognition of the newly described species S. ertekinii.
机译:基于联盟的物种间系统关系的推断考虑了由于谱系分选不完整而导致的基因树不一致,但是对于这种有意义的方法,必须正确界定。由于个体对物种的替代分配会导致不同的参数模型,因此可以使用模型选择方法来优化物种分类模型。在贝叶斯框架中,基于边际似然估计的贝叶斯因子(BF)可用于测试所研究组的一系列可能的分类。在这里,我们探索BF和Akaike信息准则(AIC),以区分开花植物世系Silene宗派中的不同物种分类。隐孢子虫(石竹科)。我们通过BEAST中实施的路径采样(PS),垫脚石采样(SS)和谐波均值估算器(HME)方法估算了不同物种分类模型的边际可能性。为了从其他物种分类模型中进行选择,还通过马尔可夫链蒙特卡洛分析(AICM)对AIC进行了基于后仿真的模拟。将结果与BP&P软件的结果进行比较。我们的结果与最近的另一项研究一致,即PS和SS方法的边际似然估计可用于比较不同的物种分类,并强烈支持对新描述的物种S. ertekinii的识别。

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