Marmolejo-Ramos Fernando, Cousineau Denis, Benites Luis, Maehara Rocío
Gösta Ekman Laboratory, Department of Psychology, Stockholm University Stockholm, Sweden.
School of Psychology, University of Ottawa Ottawa, ON, Canada.
Front Psychol. 2015 Jan 7;5:1548. doi: 10.3389/fpsyg.2014.01548. eCollection 2014.
Reaction time (RT) is one of the most common types of measure used in experimental psychology. Its distribution is not normal (Gaussian) but resembles a convolution of normal and exponential distributions (Ex-Gaussian). One of the major assumptions in parametric tests (such as ANOVAs) is that variables are normally distributed. Hence, it is acknowledged by many that the normality assumption is not met. This paper presents different procedures to normalize data sampled from an Ex-Gaussian distribution in such a way that they are suitable for parametric tests based on the normality assumption. Using simulation studies, various outlier elimination and transformation procedures were tested against the level of normality they provide. The results suggest that the transformation methods are better than elimination methods in normalizing positively skewed data and the more skewed the distribution then the transformation methods are more effective in normalizing such data. Specifically, transformation with parameter lambda -1 leads to the best results.
反应时(RT)是实验心理学中最常用的测量类型之一。其分布不是正态(高斯)分布,而是类似于正态分布和指数分布的卷积(Ex - 高斯分布)。参数检验(如方差分析)的主要假设之一是变量呈正态分布。因此,许多人承认正态性假设不成立。本文提出了不同的程序,以使从Ex - 高斯分布中采样的数据标准化,使其适合基于正态性假设的参数检验。通过模拟研究,针对各种异常值消除和转换程序所提供的正态性水平进行了测试。结果表明,在使正偏态数据标准化方面,转换方法优于消除方法,并且分布的偏态越大,转换方法在使此类数据标准化方面就越有效。具体而言,参数λ为 -1的转换会产生最佳结果。