Methodology Center at Penn State.
Department of Epidemiology and Biostatistics at Temple University.
Brief Bioinform. 2020 Mar 23;21(2):553-565. doi: 10.1093/bib/bbz016.
Information criteria (ICs) based on penalized likelihood, such as Akaike's information criterion (AIC), the Bayesian information criterion (BIC) and sample-size-adjusted versions of them, are widely used for model selection in health and biological research. However, different criteria sometimes support different models, leading to discussions about which is the most trustworthy. Some researchers and fields of study habitually use one or the other, often without a clearly stated justification. They may not realize that the criteria may disagree. Others try to compare models using multiple criteria but encounter ambiguity when different criteria lead to substantively different answers, leading to questions about which criterion is best. In this paper we present an alternative perspective on these criteria that can help in interpreting their practical implications. Specifically, in some cases the comparison of two models using ICs can be viewed as equivalent to a likelihood ratio test, with the different criteria representing different alpha levels and BIC being a more conservative test than AIC. This perspective may lead to insights about how to interpret the ICs in more complex situations. For example, AIC or BIC could be preferable, depending on the relative importance one assigns to sensitivity versus specificity. Understanding the differences and similarities among the ICs can make it easier to compare their results and to use them to make informed decisions.
信息准则(ICs)基于惩罚似然,例如赤池信息量准则(AIC)、贝叶斯信息量准则(BIC)及其样本量调整版本,广泛用于健康和生物研究中的模型选择。然而,不同的准则有时支持不同的模型,这导致了关于哪个准则最可信的讨论。一些研究人员和研究领域习惯使用其中一个或另一个,通常没有明确的理由。他们可能没有意识到准则可能存在分歧。其他人试图使用多个准则来比较模型,但当不同的准则导致实质性不同的答案时,会遇到模糊性,从而导致关于哪个准则最好的问题。在本文中,我们提出了一种替代的视角来理解这些准则,这有助于解释它们的实际意义。具体来说,在某些情况下,使用 ICs 比较两个模型可以看作是似然比检验的等效方法,不同的准则代表不同的 alpha 水平,BIC 比 AIC 更保守。这种视角可能会对如何在更复杂的情况下解释 ICs 提供一些见解。例如,根据对灵敏度与特异性的相对重要性,可以选择 AIC 或 BIC。理解 ICs 之间的差异和相似之处,可以更方便地比较它们的结果,并使用它们做出明智的决策。