Morris William K, Vesk Peter A, McCarthy Michael A, Bunyavejchewin Sarayudh, Baker Patrick J
Quantitative and Applied Ecology Group, The School of Botany, The University of Melbourne Melbourne, Victoria, Australia.
Thai National Parks Wildlife and Plant Conservation Department Bangkok, Thailand.
Ecol Evol. 2015 Jan;5(1):102-8. doi: 10.1002/ece3.1346. Epub 2014 Dec 5.
Despite benefits for precision, ecologists rarely use informative priors. One reason that ecologists may prefer vague priors is the perception that informative priors reduce accuracy. To date, no ecological study has empirically evaluated data-derived informative priors' effects on precision and accuracy. To determine the impacts of priors, we evaluated mortality models for tree species using data from a forest dynamics plot in Thailand. Half the models used vague priors, and the remaining half had informative priors. We found precision was greater when using informative priors, but effects on accuracy were more variable. In some cases, prior information improved accuracy, while in others, it was reduced. On average, models with informative priors were no more or less accurate than models without. Our analyses provide a detailed case study on the simultaneous effect of prior information on precision and accuracy and demonstrate that when priors are specified appropriately, they lead to greater precision without systematically reducing model accuracy.
尽管信息性先验概率对精确性有益,但生态学家很少使用。生态学家可能更喜欢模糊先验概率的一个原因是,他们认为信息性先验概率会降低准确性。迄今为止,尚无生态研究实证评估源自数据的信息性先验概率对精确性和准确性的影响。为了确定先验概率的影响,我们利用泰国一个森林动态监测样地的数据,评估了树木物种的死亡率模型。一半的模型使用模糊先验概率,其余一半使用信息性先验概率。我们发现,使用信息性先验概率时精确性更高,但对准确性的影响则更具变化性。在某些情况下,先验信息提高了准确性,而在其他情况下,准确性则降低了。平均而言,使用信息性先验概率的模型与不使用的模型在准确性上并无差异。我们的分析提供了一个关于先验信息对精确性和准确性同时影响的详细案例研究,并表明当先验概率指定适当时,它们会带来更高的精确性,而不会系统性地降低模型准确性。