Bush L K, Hess U, Wolford G
Department of Psychology and Counseling, Dartmouth College, Hanover, New Hampshire 03755.
Psychol Bull. 1993 May;113(3):566-79. doi: 10.1037/0033-2909.113.3.566.
We explored the use of transformations to improve power in within-subject designs in which multiple observations are collected for each S in each condition, such as reaction time and psychophysiological experiments. Often, the multiple measures within a treatment are simply averaged to yield a single number, but other transformations have been proposed. Monte Carlo simulations were used to investigate the influence of those transformations on the probabilities of Type I and Type II errors. With normally distributed data, Z and range correction transformations led to substantial increases in power over simple averages. With highly skewed distributions, the optimal transformation depended on several variables, but Z and range correction performed well across conditions. Correction for outliers was useful in increasing power, and trimming was more effective than eliminating all points beyond a criterion.
我们探讨了在受试者内设计中使用变换来提高检验效能,在这种设计中,针对每个条件下的每个受试者(S)收集多个观测值,例如反应时间和心理生理学实验。通常,一种处理内的多个测量值简单地求平均值以得出单个数字,但也有人提出了其他变换方法。我们使用蒙特卡罗模拟来研究这些变换对I型错误和II型错误概率的影响。对于正态分布的数据,Z变换和范围校正变换比简单平均值能显著提高检验效能。对于高度偏态分布,最优变换取决于几个变量,但Z变换和范围校正在各种条件下表现良好。对异常值进行校正有助于提高检验效能,而且截尾比剔除所有超过某个标准的点更有效。