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引用次数: 13
摘要
最近一项“重新定义统计显著性”的提议(Benjamin等人)。《自然-人类行为》(Nature Human Behaviour, 2017)声称,假阳性率会因大于2的因素而“立即改善”,只需将传统的“统计显著性”截止值从P<0.05更改为P<0.005,复制率就会翻倍。我分析了这些说法的真实性,特别关注Benjamin等人在评估其提议的影响时如何忽视P-hacking的影响。我的分析表明,一旦p黑客被考虑到较低阈值的感知好处,就会消失,从而得出两个主要结论:(i)本杰明等人(2017)声称的对假阳性率和复制率的改善被夸大和误导了。(ii)有可能的情况是,较低的临界值将使复制危机恶化。
Why 'Redefining Statistical Significance' Will Not Improve Reproducibility and Could Make the Replication Crisis Worse
A recent proposal to "redefine statistical significance" (Benjamin, et al. Nature Human Behaviour, 2017) claims that false positive rates "would immediately improve" by factors greater than two and replication rates would double simply by changing the conventional cutoff for 'statistical significance' from P<0.05 to P<0.005. I analyze the veracity of these claims, focusing especially on how Benjamin, et al neglect the effects of P-hacking in assessing the impact of their proposal. My analysis shows that once P-hacking is accounted for the perceived benefits of the lower threshold all but disappear, prompting two main conclusions: (i) The claimed improvements to false positive rate and replication rate in Benjamin, et al (2017) are exaggerated and misleading. (ii) There are plausible scenarios under which the lower cutoff will make the replication crisis worse.