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使用信息性贝叶斯先验提高双变量相关性的稳定性:一项蒙特卡罗模拟研究。

Improving the stability of bivariate correlations using informative Bayesian priors: a Monte Carlo simulation study.

作者信息

Delfin Carl

机构信息

Lund Clinical Research on Externalizing and Developmental Psychopathology (LU-CRED), Child and Adolescent Psychiatry, Department of Clinical Sciences Lund, Lund University, Lund, Sweden.

Centre for Ethics, Law and Mental Health (CELAM), Department of Psychiatry and Neurochemistry, Institute of Neuroscience and Physiology, Sahlgrenska Academy, University of Gothenburg, Gothenburg, Sweden.

出版信息

Front Psychol. 2023 Sep 7;14:1253452. doi: 10.3389/fpsyg.2023.1253452. eCollection 2023.

Abstract

OBJECTIVE

Much of psychological research has suffered from small sample sizes and low statistical power, resulting in unstable parameter estimates. The Bayesian approach offers a promising solution by incorporating prior knowledge into statistical models, which may lead to improved stability compared to a frequentist approach.

METHODS

Simulated data from four populations with known bivariate correlations ( = 0.1, 0.2, 0.3, 0.4) was used to estimate the sample correlation as samples were sequentially added from the population, from  = 10 to  = 500. The impact of three different, subjectively defined prior distributions (weakly, moderately, and highly informative) was investigated and compared to a frequentist model.

RESULTS

The results show that bivariate correlation estimates are unstable, and that the risk of obtaining an estimate that is exaggerated or in the wrong direction is relatively high, for sample sizes for below 100, and considerably so for sample sizes below 50. However, this instability can be constrained by informative Bayesian priors.

CONCLUSION

Informative Bayesian priors have the potential to significantly reduce sample size requirements and help ensure that obtained estimates are in line with realistic expectations. The combined stabilizing and regularizing effect of a weakly informative prior is particularly useful when conducting research with small samples. The impact of more informative Bayesian priors depends on one's threshold for probability and whether one's goal is to obtain an estimate merely in the correct direction, or to obtain a high precision estimate whose associated interval falls within a narrow range. Implications for sample size requirements and directions for future research are discussed.

摘要

目的

许多心理学研究存在样本量小和统计功效低的问题,导致参数估计不稳定。贝叶斯方法通过将先验知识纳入统计模型提供了一个有前景的解决方案,与频率主义方法相比,这可能会提高稳定性。

方法

使用来自四个具有已知双变量相关性(= 0.1、0.2、0.3、0.4)总体的模拟数据,随着样本从总体中依次添加,从n = 10到n = 500,估计样本相关性。研究了三种不同的、主观定义的先验分布(弱信息、中等信息和强信息)的影响,并与频率主义模型进行比较。

结果

结果表明,双变量相关性估计不稳定,对于样本量低于100的情况,获得夸大或方向错误估计的风险相对较高,对于样本量低于50的情况更是如此。然而,这种不稳定性可以通过信息性贝叶斯先验来约束。

结论

信息性贝叶斯先验有可能显著降低样本量要求,并有助于确保获得的估计符合现实预期。当进行小样本研究时,弱信息先验的稳定和正则化综合效应特别有用。更强信息性贝叶斯先验的影响取决于一个人的概率阈值,以及其目标是仅仅获得正确方向的估计,还是获得高精度估计且其相关区间落在狭窄范围内。讨论了对样本量要求的影响以及未来研究的方向。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d364/10517051/7a3e098b3d80/fpsyg-14-1253452-g001.jpg

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