基于模拟的方差设计析因分析的功效分析

IF 15.6 1区 心理学 Q1 PSYCHOLOGY Advances in Methods and Practices in Psychological Science Pub Date : 2021-01-01 DOI:10.1177/2515245920951503
D. Lakens, Aaron R. Caldwell
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引用次数: 147

摘要

研究人员在报告实验结果时经常依靠方差分析(ANOVA)。为了确保一项研究有足够的动力来产生信息丰富的方差分析结果,研究人员可以进行先验的功率分析。然而,因子方差分析设计的功率分析往往是一个挑战。当前的软件解决方案不允许对具有多个内部参与者因素的复杂设计进行功率分析。此外,功率分析通常需要η p 2或Cohen’s f作为输入,但这些效应量并不直观,也不能推广到不同的实验设计中。我们已经创建了R包Superpower和在线Shiny应用程序,使没有丰富编程经验的研究人员能够对多达三个参与者内部或参与者之间因素的ANOVA设计进行基于模拟的功率分析。预测的效果是通过指定平均值、标准偏差和参与者内部因素的相关性来输入的。模拟为所有ANOVA主效应、相互作用和个体比较提供了统计能力。该软件可以绘制各种样本量范围内的功率,可以控制多重比较,并且可以在违反均匀性或球形假设时计算功率。本教程演示了如何执行先验功率分析来设计主要效应、相互作用和个体比较的信息研究,并强调了决定因子方差分析设计的统计功率的重要因素。
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Simulation-Based Power Analysis for Factorial Analysis of Variance Designs
Researchers often rely on analysis of variance (ANOVA) when they report results of experiments. To ensure that a study is adequately powered to yield informative results with an ANOVA, researchers can perform an a priori power analysis. However, power analysis for factorial ANOVA designs is often a challenge. Current software solutions do not allow power analyses for complex designs with several within-participants factors. Moreover, power analyses often need η p 2 or Cohen’s f as input, but these effect sizes are not intuitive and do not generalize to different experimental designs. We have created the R package Superpower and online Shiny apps to enable researchers without extensive programming experience to perform simulation-based power analysis for ANOVA designs of up to three within- or between-participants factors. Predicted effects are entered by specifying means, standard deviations, and, for within-participants factors, the correlations. The simulation provides the statistical power for all ANOVA main effects, interactions, and individual comparisons. The software can plot power across a range of sample sizes, can control for multiple comparisons, and can compute power when the homogeneity or sphericity assumption is violated. This Tutorial demonstrates how to perform a priori power analysis to design informative studies for main effects, interactions, and individual comparisons and highlights important factors that determine the statistical power for factorial ANOVA designs.
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来源期刊
CiteScore
21.20
自引率
0.70%
发文量
16
期刊介绍: In 2021, Advances in Methods and Practices in Psychological Science will undergo a transition to become an open access journal. This journal focuses on publishing innovative developments in research methods, practices, and conduct within the field of psychological science. It embraces a wide range of areas and topics and encourages the integration of methodological and analytical questions. The aim of AMPPS is to bring the latest methodological advances to researchers from various disciplines, even those who are not methodological experts. Therefore, the journal seeks submissions that are accessible to readers with different research interests and that represent the diverse research trends within the field of psychological science. The types of content that AMPPS welcomes include articles that communicate advancements in methods, practices, and metascience, as well as empirical scientific best practices. Additionally, tutorials, commentaries, and simulation studies on new techniques and research tools are encouraged. The journal also aims to publish papers that bring advances from specialized subfields to a broader audience. Lastly, AMPPS accepts Registered Replication Reports, which focus on replicating important findings from previously published studies. Overall, the transition of Advances in Methods and Practices in Psychological Science to an open access journal aims to increase accessibility and promote the dissemination of new developments in research methods and practices within the field of psychological science.
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