使用认知比率评估假设:对不精确假设的不精确惩罚。

David Trafimow
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引用次数: 26

摘要

根据贝叶斯学派,零假设显著性检验程序不是演绎有效的,因为它涉及在该假设的后验概率未知的情况下保留或拒绝零假设。其他的批评是,这个过程毫无意义,鼓励了不精确的假设。然而,根据非贝叶斯学派,没有办法为零假设分配先验概率,因此贝叶斯统计也不起作用。因此,两组人都没有接受任何程序作为接受或拒绝假设的令人信服的理由。作者旨在提供这样一种方法。在此过程中,作者区分了概率和认知估计,并认为,尽管两者在不完全确定的科学中都很重要,但认知估计与假设检验最相关。在此基础上,作者提出用认知比率来评估假设,并探讨了这一建议的意义。一个暗示是,通过对不精确的假设施加惩罚,有可能鼓励精确的理论化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using epistemic ratios to evaluate hypotheses: an imprecision penalty for imprecise hypotheses.

According to Bayesians, the null hypothesis significance-testing procedure is not deductively valid because it involves the retention or rejection of the null hypothesis under conditions where the posterior probability of that hypothesis is not known. Other criticisms are that this procedure is pointless and encourages imprecise hypotheses. However, according to non-Bayesians, there is no way of assigning a prior probability to the null hypothesis, and so Bayesian statistics do not work either. Consequently, no procedure has been accepted by both groups as providing a compelling reason to accept or reject hypotheses. The author aims to provide such a method. In the process, the author distinguishes between probability and epistemic estimation and argues that, although both are important in a science that is not completely deterministic, epistemic estimation is most relevant for hypothesis testing. Based on this analysis, the author proposes that hypotheses be evaluated via epistemic ratios and explores the implications of this proposal. One implication is that it is possible to encourage precise theorizing by imposing a penalty for imprecise hypotheses.

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