判别效度
线性判别分析
判别式
最优判别分析
人工智能
外部有效性
计算机科学
机器学习
心理学
统计
数学
心理测量学
内部一致性
作者
Mikko Rönkkö,Eunseong Cho
标识
DOI:10.1177/1094428120968614
摘要
Discriminant validity was originally presented as a set of empirical criteria that can be assessed from multitrait-multimethod (MTMM) matrices. Because datasets used by applied researchers rarely lend themselves to MTMM analysis, the need to assess discriminant validity in empirical research has led to the introduction of numerous techniques, some of which have been introduced in an ad hoc manner and without rigorous methodological support. We review various definitions of and techniques for assessing discriminant validity and provide a generalized definition of discriminant validity based on the correlation between two measures after measurement error has been considered. We then review techniques that have been proposed for discriminant validity assessment, demonstrating some problems and equivalencies of these techniques that have gone unnoticed by prior research. After conducting Monte Carlo simulations that compare the techniques, we present techniques called CI CFA (sys) and [Formula: see text](sys) that applied researchers can use to assess discriminant validity.
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