Statistically significant? Let us recognize that estimates of tested effects are uncertain

Pub Date : 2021-10-29 DOI:10.1177/20515707211040743
A. Bultez, C. Derbaix, Jean-Luc Herrmann
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引用次数: 1

Abstract

Haven’t all of us dreamt of concluding that our results be statistically significant, that is, characterized by a p-value lying below an arbitrary threshold, most often 5 % ? In this article, we, first, deplore that p has been largely misunderstood, and that its misinterpretation has entailed a fallacious dichotomization and an understatement of the uncertainty prevailing about the effect tested. Next, we introduce and explain a brand-new – direct – measure of the plausibility of the effect under study. Then, we illustrate the relevance of this indicator by revisiting a recently published marketing research case. We also insist on the necessity to contextualize it, using complementary credibility intervals graphically contrasted. Beyond making researchers aware of the exact meaning of test-related probabilities, the delineated approach invites them to formulate their inferences with prudence and modesty acknowledging how uncertain these are.
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统计上显著的吗?让我们认识到,对试验效果的估计是不确定的
难道我们所有人都没有想过得出这样的结论:我们的结果具有统计学意义,即p值低于任意阈值,通常为5%?在这篇文章中,我们首先感到遗憾的是,p在很大程度上被误解了,对它的误解导致了错误的二分法,并低估了测试效果的不确定性。接下来,我们介绍并解释了一种全新的、直接的、衡量所研究效果合理性的方法。然后,我们通过回顾最近发表的一个营销研究案例来说明这一指标的相关性。我们还坚持有必要将其背景化,使用图形对比的互补可信度区间。除了让研究人员意识到测试相关概率的确切含义外,所描述的方法还邀请他们谨慎和谦虚地制定推论,承认这些概率的不确定性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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