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首页> 外文期刊>Behavioral Ecology and Sociobiology >Model selection and model averaging in behavioural ecology: the utility of the IT-AIC framework
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Model selection and model averaging in behavioural ecology: the utility of the IT-AIC framework

机译:行为生态学中的模型选择和模型平均:IT-AIC框架的实用性

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Behavioural ecologists often study complex systems in which multiple hypotheses could be proposed to explain observed phenomena. For some systems, simple controlled experiments can be employed to reveal part of the complexity; often, however, observational studies that incorporate a multitude of causal factors may be the only (or preferred) avenue of study. We assess the value of recently advocated approaches to inference in both contexts. Specifically, we examine the use of information theoretic (IT) model selection using Akaike’s information criterion (AIC). We find that, for simple analyses, the advantages of switching to an IT-AIC approach are likely to be slight, especially given recent emphasis on biological rather than statistical significance. By contrast, the model selection approach embodied by IT approaches offers significant advantages when applied to problems of more complex causality. Model averaging is an intuitively appealing extension to model selection. However, we were unable to demonstrate consistent improvements in prediction accuracy when using model averaging with IT-AIC; our equivocal results suggest that more research is needed on its utility. We illustrate our arguments with worked examples from behavioural experiments.
机译:行为生态学家经常研究复杂的系统,其中可以提出多种假设来解释观察到的现象。对于某些系统,可以采用简单的受控实验来揭示部分复杂性。但是,通常,包含多种因果关系的观察性研究可能是唯一(或首选)的研究途径。我们在这两种情况下评估了最近提倡的推理方法的价值。具体来说,我们使用Akaike的信息标准(AIC)来研究信息理论(IT)模型选择的使用。我们发现,对于简单的分析,切换到IT-AIC方法的优势可能很小,尤其是考虑到最近强调的是生物学意义而不是统计学意义。相比之下,IT方法所体现的模型选择方法在应用于因果关系更为复杂的问题时具有明显的优势。模型平均是模型选择的直观吸引人的扩展。但是,当使用模型平均和IT-AIC进行比较时,我们无法证明预测准确性的一致性提高;我们模棱两可的结果表明,需要对其用途进行更多的研究。我们用行为实验中的实例说明了我们的论点。

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