适度
样本量测定
可靠性(半导体)
变量(数学)
回归分析
线性回归
变量
计算机科学
统计
功率(物理)
利克特量表
样品(材料)
功率分析
数学
算法
物理
数学分析
量子力学
色谱法
密码学
化学
作者
David A.A. Baranger,Megan C. Finsaas,Brandon L. Goldstein,Colin E. Vize,Donald R. Lynam,Thomas M. Olino
标识
DOI:10.31234/osf.io/5ptd7
摘要
Interaction analyses (also termed ‘moderation’ analyses or ‘moderated multiple regression’) are a form of linear regression analysis designed to test whether the association between two variables changes when conditioned on a third variable. It can be challenging to perform a power analysis for interactions with existing software, particularly when variables are correlated and continuous. Moreover, while power is impacted by main effects, their correlation, and variable reliability, it can be unclear how to incorporate these effects into a power analysis. The R package InteractionPoweR and associated Shiny apps allow researchers with minimal or no programming experience to perform analytic and simulation-based power analyses for interactions. At minimum, these analyses require the Pearson’s correlation between variables and sample size, and parameters including reliability and the number of discrete levels that a variable takes (e.g., binary or likert scale) can optionally be specified. In this Tutorial we demonstrate how to perform power analyses using our package and give examples of how power can be impacted by main effects, correlations between main effects, reliability, and variable distributions. We close with a brief discussion of how researchers may select an appropriate interaction effect size when performing a power analysis.
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