Xiao Leifeng, Hau Kit-Tai
The Chinese University of Hong Kong, Hong Kong SAR, P.R. China.
Educ Psychol Meas. 2023 Feb;83(1):5-27. doi: 10.1177/00131644221088240. Epub 2022 Apr 11.
We examined the performance of coefficient alpha and its potential competitors (ordinal alpha, omega total, Revelle's omega total [omega RT], omega hierarchical [omega h], greatest lower bound [GLB], and coefficient ) with continuous and discrete data having different types of non-normality. Results showed the estimation bias was acceptable for continuous data with varying degrees of non-normality when the scales were strong (high loadings). This bias, however, became quite large with moderate strength scales and increased with increasing non-normality. For Likert-type scales, other than omega h, most indices were acceptable with non-normal data having at least four points, and more points were better. For different exponential distributed data, omega RT and GLB were robust, whereas the bias of other indices for binomial-beta distribution was generally large. An examination of an authentic large-scale international survey suggested that its items were at worst moderately non-normal; hence, non-normality was not a big concern. We recommend (a) the demand for continuous and normally distributed data for alpha may not be necessary for less severely non-normal data; (b) for severely non-normal data, we should have at least four scale points, and more points are better; and (c) there is no single golden standard for all data types, other issues such as scale loading, model structure, or scale length are also important.
我们检验了系数α及其潜在竞争对手(有序α、ω总体、雷维尔的ω总体[ωRT]、分层ω[ωh]、最大下界[GLB]以及系数)在具有不同类型非正态性的连续和离散数据上的表现。结果表明,当量表强度较高(载荷较大)时,对于具有不同程度非正态性的连续数据,估计偏差是可接受的。然而,在量表强度适中时,这种偏差变得相当大,并且随着非正态性的增加而增大。对于李克特式量表,除了ωh之外,对于至少有四个点的非正态数据,大多数指标都是可接受的,并且点数越多越好。对于不同的指数分布数据,ωRT和GLB是稳健的,而对于二项贝塔分布,其他指标的偏差通常较大。对一项真实的大规模国际调查的检验表明,其项目至多为中度非正态;因此,非正态性并不是一个大问题。我们建议:(a)对于不太严重的非正态数据,可能不需要对α要求连续且正态分布的数据;(b)对于严重非正态的数据,我们应该至少有四个量表点,并且点数越多越好;(c)对于所有数据类型不存在单一的黄金标准,其他问题如量表载荷、模型结构或量表长度也很重要。