Department of Economics, BI Norwegian Business School.
Psychol Methods. 2024 Feb;29(1):65-87. doi: 10.1037/met0000495. Epub 2022 May 19.
In the social sciences, measurement scales often consist of ordinal items and are commonly analyzed using factor analysis. Either data are treated as continuous, or a discretization framework is imposed in order to take the ordinal scale properly into account. Correlational analysis is central in both approaches, and we review recent theory on correlations obtained from ordinal data. To ensure appropriate estimation, the item distributions prior to discretization should be (approximately) known, or the thresholds should be known to be equally spaced. We refer to such knowledge as substantive because it may not be extracted from the data, but must be rooted in expert knowledge about the data-generating process. An illustrative case is presented where absence of substantive knowledge of the item distributions inevitably leads the analyst to conclude that a truly two-dimensional case is perfectly one-dimensional. Additional studies probe the extent to which violation of the standard assumption of underlying normality leads to bias in correlations and factor models. As a remedy, we propose an adjusted polychoric estimator for ordinal factor analysis that takes substantive knowledge into account. Also, we demonstrate how to use the adjusted estimator in sensitivity analysis when the continuous item distributions are known only approximately. (PsycInfo Database Record (c) 2024 APA, all rights reserved).
在社会科学中,度量尺度通常由有序项目组成,通常使用因子分析进行分析。数据要么被视为连续的,要么强加一个离散化框架,以便正确考虑有序尺度。相关分析在这两种方法中都是核心,我们回顾了最近关于从有序数据中获得的相关性的理论。为了确保适当的估计,在离散化之前,项目分布应该(近似)已知,或者阈值应该等距已知。我们将这种知识称为实质性的,因为它可能无法从数据中提取,而必须植根于关于数据生成过程的专家知识。我们提出了一个说明性的案例,其中缺乏对项目分布的实质性知识必然导致分析师得出这样的结论:一个真正的二维情况是完全一维的。其他研究探讨了违反潜在正态性的标准假设在多大程度上导致相关性和因子模型的偏差。作为一种补救措施,我们提出了一种用于有序因子分析的调整后的多项式估计量,该估计量考虑了实质性知识。此外,我们还展示了当连续的项目分布仅近似已知时,如何在敏感性分析中使用调整后的估计量。(PsycInfo 数据库记录(c)2024 APA,保留所有权利)。