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首页> 外文期刊>Perspectives on Psychological Science >Beyond Power Calculations: Assessing Type S (Sign) and Type M (Magnitude) Errors
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Beyond Power Calculations: Assessing Type S (Sign) and Type M (Magnitude) Errors

机译:功率计算之外:评估S型(正负号)和M型(幅值)误差

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摘要

Statistical power analysis provides the conventional approach to assess error rates when designing a research study. However, power analysis is flawed in that a narrow emphasis on statistical significance is placed as the primary focus of study design. In noisy, small-sample settings, statistically significant results can often be misleading. To help researchers address this problem in the context of their own studies, we recommend design calculations in which (a) the probability of an estimate being in the wrong direction (Type S [sign] error) and (b) the factor by which the magnitude of an effect might be overestimated (Type M [magnitude] error or exaggeration ratio) are estimated. We illustrate with examples from recent published research and discuss the largest challenge in a design calculation: coming up with reasonable estimates of plausible effect sizes based on external information.
机译:统计功效分析提供了设计研究研究时评估错误率的常规方法。但是,功效分析的缺陷在于,将狭义的统计学意义作为研究设计的主要重点。在嘈杂的小样本环境中,具有统计意义的结果通常会产生误导。为了帮助研究人员在他们自己的研究中解决这个问题,我们建议进行设计计算,其中(a)估算的方向错误(类型S [sign]错误),以及(b)估算的方向。效果的大小可能被高估了(估计了M型[幅度]误差或夸张率)。我们以最近发表的研究为例进行说明,并讨论设计计算中的最大挑战:根据外部信息得出合理的合理大小估计。

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