Templeton Alan R
Department of Biology, Washington University, St. Louis, MO 63130-4899, USA.
Mol Ecol. 2009 Jan;18(2):319-31. doi: 10.1111/j.1365-294X.2008.04026.x.
Nested clade phylogeographical analysis (NCPA) and approximate Bayesian computation (ABC) have been used to test phylogeographical hypotheses. Multilocus NCPA tests null hypotheses, whereas ABC discriminates among a finite set of alternatives. The interpretive criteria of NCPA are explicit and allow complex models to be built from simple components. The interpretive criteria of ABC are ad hoc and require the specification of a complete phylogeographical model. The conclusions from ABC are often influenced by implicit assumptions arising from the many parameters needed to specify a complex model. These complex models confound many assumptions so that biological interpretations are difficult. Sampling error is accounted for in NCPA, but ABC ignores important sources of sampling error that creates pseudo-statistical power. NCPA generates the full sampling distribution of its statistics, but ABC only yields local probabilities, which in turn make it impossible to distinguish between a good fitting model, a non-informative model, and an over-determined model. Both NCPA and ABC use approximations, but convergences of the approximations used in NCPA are well defined whereas those in ABC are not. NCPA can analyse a large number of locations, but ABC cannot. Finally, the dimensionality of tested hypothesis is known in NCPA, but not for ABC. As a consequence, the 'probabilities' generated by ABC are not true probabilities and are statistically non-interpretable. Accordingly, ABC should not be used for hypothesis testing, but simulation approaches are valuable when used in conjunction with NCPA or other methods that do not rely on highly parameterized models.
嵌套支系系统地理学分析(NCPA)和近似贝叶斯计算(ABC)已被用于检验系统地理学假设。多位点NCPA检验零假设,而ABC则在一组有限的备择假设中进行区分。NCPA的解释标准明确,允许从简单组件构建复杂模型。ABC的解释标准是临时设定的,需要指定一个完整的系统地理学模型。ABC得出的结论往往受到指定复杂模型所需的许多参数所产生的隐含假设的影响。这些复杂模型混淆了许多假设,因此难以进行生物学解释。NCPA考虑了抽样误差,但ABC忽略了产生伪统计功效的重要抽样误差来源。NCPA生成其统计量的完整抽样分布,但ABC只产生局部概率,这反过来又使得无法区分拟合良好的模型、无信息模型和超定模型。NCPA和ABC都使用近似方法,但NCPA中使用的近似方法的收敛性是明确的,而ABC中的则不明确。NCPA可以分析大量位置,但ABC不能。最后,NCPA中测试假设的维度是已知的,但ABC中则不然。因此,ABC产生的“概率”不是真正的概率,在统计上无法解释。因此,ABC不应被用于假设检验,但模拟方法与NCPA或其他不依赖高度参数化模型的方法结合使用时是有价值的。