Department of Psychology, University of Kent, Canterbury, Kent, UK.
Behav Res Methods. 2012 Mar;44(1):232-47. doi: 10.3758/s13428-011-0145-1.
Psychologists, psycholinguists, and other researchers using language stimuli have been struggling for more than 30 years with the problem of how to analyze experimental data that contain two crossed random effects (items and participants). The classical analysis of variance does not apply; alternatives have been proposed but have failed to catch on, and a statistically unsatisfactory procedure of using two approximations (known as F(1) and F(2)) has become the standard. A simple and elegant solution using mixed model analysis has been available for 15 years, and recent improvements in statistical software have made mixed models analysis widely available. The aim of this article is to increase the use of mixed models by giving a concise practical introduction and by giving clear directions for undertaking the analysis in the most popular statistical packages. The article also introduces the DJMIXED: add-on package for SPSS, which makes entering the models and reporting their results as straightforward as possible.
心理学家、心理语言学家和其他使用语言刺激的研究人员已经在解决如何分析包含两个交叉随机效应(项目和参与者)的实验数据的问题上苦苦挣扎了 30 多年。经典的方差分析不适用;已经提出了替代方法,但未能流行起来,并且使用两个近似值(称为 F(1) 和 F(2))的统计学上不满意的程序已成为标准。使用混合模型分析的简单而优雅的解决方案已经存在了 15 年,并且统计软件的最新改进使得混合模型分析得到了广泛应用。本文的目的是通过简洁实用的介绍和为在最流行的统计软件包中进行分析提供明确的指导来增加混合模型的使用。本文还介绍了用于 SPSS 的 DJMIXED:附加软件包,它使输入模型和报告结果变得尽可能简单。