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首页> 外文期刊>Behavioral Ecology and Sociobiology >A brief guide to model selection, multimodel inference and model averaging in behavioural ecology using Akaike’s information criterion
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A brief guide to model selection, multimodel inference and model averaging in behavioural ecology using Akaike’s information criterion

机译:使用Akaike信息准则的行为生态学中模型选择,多模型推理和模型平均的简要指南

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摘要

Akaike’s information criterion (AIC) is increasingly being used in analyses in the field of ecology. This measure allows one to compare and rank multiple competing models and to estimate which of them best approximates the “true” process underlying the biological phenomenon under study. Behavioural ecologists have been slow to adopt this statistical tool, perhaps because of unfounded fears regarding the complexity of the technique. Here, we provide, using recent examples from the behavioural ecology literature, a simple introductory guide to AIC: what it is, how and when to apply it and what it achieves. We discuss multimodel inference using AIC—a procedure which should be used where no one model is strongly supported. Finally, we highlight a few of the pitfalls and problems that can be encountered by novice practitioners.
机译:赤池的信息标准(AIC)越来越多地用于生态学领域的分析中。这项措施可以比较多个竞争模型并对其进行排名,并估计其中哪个最近似于所研究生物现象的“真实”过程。行为生态学家对这种统计工具的采用一直很慢,这可能是因为对这种技术的复杂性没有根据的担心。在这里,我们使用行为生态学文献中的最新示例,提供有关AIC的简单入门指南:它是什么,如何以及何时应用它以及实现了什么。我们讨论了使用AIC进行多模型推理的方法,该过程应在没有任何模型得到大力支持的情况下使用。最后,我们重点介绍了新手从业人员可能遇到的一些陷阱和问题。

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