Fordham University, Bronx, NY, USA.
University of Missouri, Columbia, MO, USA.
Behav Res Methods. 2019 Apr;51(2):589-601. doi: 10.3758/s13428-018-1161-1.
According to Stevens's classification of measurement, continuous data can be either ratio or interval scale data. The relationship between two continuous variables is assumed to be linear and is estimated with the Pearson correlation coefficient, which assumes normality between the variables. If researchers use conventional statistics (t test or analysis of variance) or factor analysis of correlation matrices to study gender or race differences, the data are assumed to be continuous and normally distributed. If continuous data are discretized, they become ordinal; thus, discretization is widely considered to be a downgrading of measurement. However, discretization is advantageous for data analysis, because it provides interactive relationships between the discretized variables and naturally measured categorical variables such as gender and race. Such interactive relationship information between categories is not available with the ratio or interval scale of measurement, but it is useful to researchers in some applications. In the present study, Wechsler intelligence and memory scores were discretized, and the interactive relationships were examined among the discretized Wechsler scores (by gender and race). Unlike in previous studies, we estimated category associations and used correlations to enhance their interpretation, and our results showed distinct gender and racial/ethnic group differences in the correlational patterns.
根据 Stevens 的测量分类,连续数据可以是比率数据或区间尺度数据。假设两个连续变量之间存在线性关系,并使用 Pearson 相关系数进行估计,该系数假设变量之间存在正态性。如果研究人员使用传统统计学(t 检验或方差分析)或相关矩阵的因子分析来研究性别或种族差异,则假设数据是连续的和正态分布的。如果连续数据被离散化,它们就变成了有序数据;因此,离散化被广泛认为是测量降级。然而,离散化对于数据分析是有利的,因为它提供了离散变量与自然测量的分类变量(如性别和种族)之间的交互关系。这种类别之间的交互关系信息在比率或区间尺度的测量中是不可用的,但在某些应用中对研究人员很有用。在本研究中,我们对韦氏智力和记忆分数进行了离散化,并检查了离散化的韦氏分数(按性别和种族)之间的交互关系。与之前的研究不同,我们估计了类别关联,并使用相关系数来增强其解释,我们的结果显示出相关模式中明显的性别和种族/民族差异。