It is now widely accepted that the standard inferential toolkit used by the scientific research community -- null-hypothesis significance testing (NHST) -- is not fit for purpose. Yet despite the threat posed to the scientific enterprise, there is no agreement concerning alternative approaches for evidence assessment. This lack of consensus reflects long-standing issues concerning Bayesian methods, the principal alternative to NHST. We report on recent work that builds on an approach to inference put forward over 70 years ago to address the well-known "Problem of Priors" in Bayesian analysis, by reversing the conventional prior-likelihood-posterior ("forward") use of Bayes's Theorem. Such Reverse-Bayes analysis allows priors to be deduced from the likelihood by requiring that the posterior achieve a specified level of credibility. We summarise the technical underpinning of this approach, and show how it opens up new approaches to common inferential challenges, such as assessing the credibility of scientific findings, setting them in appropriate context, estimating the probability of successful replications, and extracting more insight from NHST while reducing the risk of misinterpretation. We argue that Reverse-Bayes methods have a key role to play in making Bayesian methods more accessible and attractive for evidence assessment and research synthesis. As a running example we consider a recently published meta-analysis from several randomized controlled clinical trials investigating the association between corticosteroids and mortality in hospitalized patients with COVID-19.
翻译:现在人们普遍认为,科学研究界使用的标准推断工具包 -- -- 无效假想意义测试(NHST) -- -- 不适合目的。然而,尽管科学企业面临威胁,对于证据评估的替代方法没有一致意见。这种缺乏共识反映了巴耶斯方法的长期问题,这是NHST的主要替代方法。我们报告了最近的工作,这项工作以70多年前提出的推断方法为基础,以解决巴伊西亚分析中众所周知的“先入为主的先入为主的先入为主的先入为主的测试(NHST ), 其方法是扭转传统的前入为主的Bayes理论(NHST ) 的使用。这种逆向-Bayes分析使得人们可以事先从可能性中推断出,要求后行者达到一定的可信度水平。我们总结了这一方法的技术基础,并展示了它如何为共同的推断挑战开辟新的方法,例如评估科学发现的信誉,在适当的背景下设定这些结果,估计成功复制的概率,并从Bayes的理论中从Bayes“先入手” 理论。这种逆向Bayes's的分析分析中获取更多的洞察,同时从Asurvial-vialvialvialvialvial Invial vial 分析中提出一种我们最近使用一种关键的研究方法,并用一个新的分析方法来解释。