Department of Psychology, University of Texas at Austin, University Station A8000, Austin, TX 78712-0187, USA.
Psychol Methods. 2011 Sep;16(3):298-318. doi: 10.1037/a0023349.
Experiments allow researchers to randomly vary the key manipulation, the instruments of measurement, and the sequences of the measurements and manipulations across participants. To date, however, the advantages of randomized experiments to manipulate both the aspects of interest and the aspects that threaten internal validity have been primarily used to make inferences about the average causal effect of the experimental manipulation. This article introduces a general framework for analyzing experimental data to make inferences about individual differences in causal effects. Approaches to analyzing the data produced by a number of classical designs and 2 more novel designs are discussed. Simulations highlight the strengths and weaknesses of the data produced by each design with respect to internal validity. Results indicate that, although the data produced by standard designs can be used to produce accurate estimates of average causal effects of experimental manipulations, more elaborate designs are often necessary for accurate inferences with respect to individual differences in causal effects. The methods described here can be diversely applied by researchers interested in determining the extent to which individuals respond differentially to an experimental manipulation or treatment and how differential responsiveness relates to individual participant characteristics.
实验允许研究人员在参与者之间随机改变关键操作、测量工具以及测量和操作的顺序。然而,迄今为止,随机实验在操纵感兴趣的方面和威胁内部有效性的方面的优势,主要用于对实验操作的平均因果效应进行推断。本文介绍了一个分析实验数据的通用框架,以对因果效应的个体差异进行推断。讨论了几种经典设计和 2 种更新颖设计产生的数据的分析方法。模拟结果突出了每种设计产生的数据在内部有效性方面的优缺点。结果表明,尽管标准设计产生的数据可用于对实验操作的平均因果效应进行准确估计,但对于因果效应的个体差异的准确推断,通常需要更复杂的设计。有兴趣确定个体对实验操作或处理的反应差异程度以及差异反应与个体参与者特征的关系的研究人员,可以灵活应用这里描述的方法。