Link William A, Barker Richard J
USGS Patuxent Wildlife Research Center, 12100 Beech Forest Road, Laurel, Maryland 20708, USA.
Ecology. 2006 Oct;87(10):2626-35. doi: 10.1890/0012-9658(2006)87[2626:mwatfo]2.0.co;2.
Statistical thinking in wildlife biology and ecology has been profoundly influenced by the introduction of AIC (Akaike's information criterion) as a tool for model selection and as a basis for model averaging. In this paper, we advocate the Bayesian paradigm as a broader framework for multimodel inference, one in which model averaging and model selection are naturally linked, and in which the performance of AIC-based tools is naturally evaluated. Prior model weights implicitly associated with the use of AIC are seen to highly favor complex models: in some cases, all but the most highly parameterized models in the model set are virtually ignored a priori. We suggest the usefulness of the weighted BIC (Bayesian information criterion) as a computationally simple alternative to AIC, based on explicit selection of prior model probabilities rather than acceptance of default priors associated with AIC. We note, however, that both procedures are only approximate to the use of exact Bayes factors. We discuss and illustrate technical difficulties associated with Bayes factors, and suggest approaches to avoiding these difficulties in the context of model selection for a logistic regression. Our example highlights the predisposition of AIC weighting to favor complex models and suggests a need for caution in using the BIC for computing approximate posterior model weights.
赤池信息准则(AIC)作为一种模型选择工具和模型平均的基础被引入后,对野生动物生物学和生态学中的统计思维产生了深远影响。在本文中,我们提倡将贝叶斯范式作为多模型推断的更广泛框架,在这个框架中,模型平均和模型选择自然地联系在一起,并且基于AIC的工具的性能也能自然地得到评估。人们发现,与使用AIC隐含相关的先验模型权重高度倾向于复杂模型:在某些情况下,模型集中除参数化程度最高的模型外,几乎所有其他模型在一开始就被实际上忽略了。我们建议使用加权贝叶斯信息准则(BIC)作为AIC在计算上更简单的替代方法,它基于对先验模型概率的明确选择,而不是接受与AIC相关的默认先验。然而,我们注意到,这两种方法都只是对精确贝叶斯因子使用的近似。我们讨论并举例说明了与贝叶斯因子相关的技术难题,并提出了在逻辑回归模型选择的背景下避免这些难题的方法。我们的例子突出了AIC权重倾向于复杂模型的特点,并表明在使用BIC计算近似后验模型权重时需要谨慎。