York University, Toronto, Ontario, Canada.
Br J Math Stat Psychol. 2010 Nov;63(Pt 3):527-37. doi: 10.1348/000711009X475853. Epub 2009 Dec 23.
Researchers often test for a lack of association between variables. A lack of association is usually established by demonstrating a non-significant relationship with a traditional test (e.g., Pearson's r). However, for logical as well as statistical reasons, such conclusions are problematic. In this paper, we discuss and compare the empirical Type I error and power rates of three lack of association tests. The results indicate that large, sometimes very large, sample sizes are required for the test statistics to be appropriate. What is especially problematic is that the required sample sizes may exceed what is practically feasible for the conditions that are expected to be common among researchers in psychology. This paper highlights the importance of using available lack of association tests, instead of traditional tests of association, for demonstrating the independence of variables, and qualifies the conditions under which these tests are appropriate.
研究人员经常测试变量之间是否缺乏关联。通常通过证明与传统测试(例如 Pearson 的 r)没有显著关系来建立缺乏关联。然而,出于逻辑和统计原因,这样的结论存在问题。在本文中,我们讨论并比较了三种缺乏关联测试的经验性 I 型错误和功效率。结果表明,对于测试统计量来说,需要非常大的样本量,有时甚至是非常大的样本量,才能使其合适。特别成问题的是,所需的样本量可能超过心理学研究人员预期的常见条件下实际可行的样本量。本文强调了使用现有的缺乏关联测试来证明变量独立性的重要性,而不是使用传统的关联测试,并限定了这些测试适用的条件。