Department of Psychology, University of California, Los Angeles.
Multivariate Behav Res. 2023 May-Jun;58(3):616-636. doi: 10.1080/00273171.2022.2077287. Epub 2022 Jun 9.
Researchers with mediation hypotheses must consider which design to use: within-subject or between-subject? In this paper, I argue that three factors should influence design choice: validity, causality, and statistical power. Threats to validity include carry-over effects, participant awareness, measurement, and more. Causality is a core element of mediation, and the assumptions required for causal inference differ between the two designs. Between-subject designs require more restrictive no-confounder assumptions, but within-subject designs require the assumption of no carry-over effects. Statistical power should be higher in within-subject designs, but the degree and conditions of this advantage are unknown for mediation analysis. A Monte Carlo simulation compares designs under a broad range of sample sizes, effect sizes, and correlations among repeated measurements. The results show within-subject designs require about half the sample size of between-subject designs to detect indirect effects of the same size, but this difference can vary with population parameters. I provide an empirical example and R script for conducting power analysis for within-subject mediation analysis. Researchers interested in conducting mediation analysis should not select within-subject designs merely because of higher power, but they should also consider validity and causality in their decision, both of which can favor between-subject designs.
被试内设计还是被试间设计?在本文中,我认为有三个因素会影响设计选择:有效性、因果关系和统计功效。有效性的威胁包括延续效应、参与者意识、测量等。因果关系是中介的核心要素,两种设计对因果推断的假设要求不同。被试间设计需要更严格的无混杂假设,但被试内设计需要没有延续效应的假设。被试内设计的统计功效应该更高,但对于中介分析来说,这种优势的程度和条件是未知的。一项蒙特卡罗模拟比较了在广泛的样本量、效应量和重复测量之间相关性条件下的设计。结果表明,被试内设计检测相同大小的间接效应所需的样本量大约是被试间设计的一半,但这种差异可能随总体参数而变化。我提供了一个实证示例和用于进行被试内中介分析功效分析的 R 脚本。有兴趣进行中介分析的研究人员不应该仅仅因为功效更高就选择被试内设计,他们还应该在决策中考虑有效性和因果关系,这两者都可能有利于被试间设计。