Bayes factors are characterized by both the powerful mathematical framework of Bayesian statistics and the useful interpretation as evidence quantification. Former requires a parameter distribution that changes by seeing the data, latter requires two fixed hypotheses w.r.t. which the evidence quantification refers to. Naturally, these fixed hypotheses must not change by seeing the data, only their credibility should! Yet, it is exactly such a change of the hypotheses themselves (not only their credibility) that occurs by seeing the data, if their content is represented by parameter distributions (a recent trend in the context of Bayes factors for about one decade), rendering a correct interpretation of the Bayes factor rather useless. Instead, this paper argues that the inferential foundation of Bayes factors can only be maintained, if hypotheses are sets of parameters, not parameter distributions. In addition, particular attention has been paid to providing an explicit terminology of the big picture of statistical inference in the context of Bayes factors as well as to the distinction between knowledge (formalized by the prior distribution and being allowed to change) and theoretical positions (formalized as hypotheses and required to stay fixed) of the phenomenon of interest.
翻译:Bayesian统计的强大数学框架和作为证据量化的有用解释,是贝叶斯因素的特征。以前要求参数分布,通过观察数据而改变,而后需要两个固定假设,而证据量化是指这两个固定假设。自然,这些固定假设不能通过看到数据而改变,只有其可信性才应该如此!然而,正是通过观察数据而出现的假设本身(而不仅仅是其可信性)的这种变化,如果其内容是由参数分布(大约十年来拜叶斯因素方面的最新趋势)所代表,对拜叶斯因素的正确解释相当无用。相反,本文认为,如果假设是一套参数,则贝叶斯因素的推断基础只能维持,而不是参数分布。此外,还特别注意提供一种明确的术语,说明巴伊斯因素方面的大统计推论本身(而不仅仅是其可信度),并区分知识(根据先前的分布和允许的变化而形成的形式)和理论立场(正式为假设,需要固定下来)与利益现象有关的理论立场(作为假设和理论立场)之间的区别。