Power to the researchers: Calculating power after estimation

Jiarui Tian, Tom Coupé, Sayak Khatua, W. R. Reed, Benjamin D. K. Wood
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Abstract

This study demonstrates a simple and reliable method for calculating ex post power. We first conduct a series of Monte Carlo experiments to assess its performance. The experiments are designed to produce artificial datasets that resemble actual data from 23 studies funded by the International Initiative for Impact Evaluation (3ie). After determining that the method performs adequately, we then apply it to the 23 studies and compare their ex post power with the ex‐ante power claimed on their funding applications. We find the average ex post power of the 3ie studies is close to 80%. However, there are more estimates of low power than would be expected if all studies had 80% true power. Most of the differences between ex post and ex ante power can be explained by differences between planned and actual total observations, number of clusters, and the degree of intracluster correlation. This demonstrates how ex post power can be used by funders to evaluate previously funded research and identify areas for improved power estimation in future research. We further show how ex post power can aid in the interpretation of both insignificant and significant estimates.
研究人员的力量:估算后计算功率
本研究展示了一种简单可靠的事后功率计算方法。我们首先进行了一系列蒙特卡罗实验来评估其性能。实验旨在生成人工数据集,这些数据集与国际影响评估倡议(3ie)资助的 23 项研究的实际数据相似。在确定该方法表现出色后,我们将其应用于这 23 项研究,并将它们的事后功率与其资助申请中声称的事前功率进行比较。我们发现,3ie 研究的平均事后功率接近 80%。但是,如果所有研究的真实效率都达到 80%,那么估计的低效率研究就会更多。事后研究与事前研究之间的大部分差异都可以用计划观测值与实际观测值总数、群组数量以及群组内相关程度之间的差异来解释。这说明了资助者可以如何利用事后功率来评估以前资助的研究,并确定在未来研究中需要改进功率估计的领域。我们进一步说明了事后分析如何帮助解释不显著和显著的估计值。
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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