关于皮尔逊相关标准误差的简要说明

Collabra Pub Date : 2023-01-01 DOI:10.1525/collabra.87615
Timo Gnambs
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引用次数: 3

摘要

积矩相关是包括元分析在内的心理学研究的中心统计量。不幸的是,它有一个相当复杂的抽样分布,导致样本相关性是各自总体相关性的有偏指标。此外,如何正确计算这些相关性的标准误差似乎存在一些不确定性。由于不存在简单的解析解,所以前面介绍了几种近似方法。本文旨在简要总结计算Pearson相关标准误差的10种不同方法。此外,对这些估计器的准确性进行了模拟研究,比较了它们在不同人口相关性和样本量下的相对百分比偏差。结果表明,对于至少40个样本量,所有估计量基本上都是无偏的。对于较小的样本,Bonett(2008)的简单近似导致偏差最小的结果。根据这些结果,建议使用表达式(1−r2)/N−3来计算Pearson相关的标准误差。
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A Brief Note on the Standard Error of the Pearson Correlation
The product-moment correlation is a central statistic in psychological research including meta-analysis. Unfortunately, it has a rather complex sampling distribution which leads to sample correlations that are biased indicators of the respective population correlations. Moreover, there seems to be some uncertainty on how to properly calculate the standard error of these correlations. Because no simple analytical solution exists, several approximations have been previously introduced. This note aims to briefly summarize 10 different ways to calculate the standard error of the Pearson correlation. Moreover, a simulation study on the accuracy of these estimators compared their relative percentage biases for different population correlations and sample sizes. The results showed that all estimators were largely unbiased for sample sizes of at least 40. For smaller samples, a simple approximation by Bonett (2008) led to the least biased results. Based on these results, it is recommended to use the expression (1−r2)/N−3 for the calculation of the standard error of the Pearson correlation.
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