Lubke Gitta H, Dolan Conor V, Kelderman Henk, Mellenbergh Gideon J
UCLA/GSEIS, University of California, Los Angeles, CA 90095-1521, USA.
Br J Math Stat Psychol. 2003 Nov;56(Pt 2):231-48. doi: 10.1348/000711003770480020.
Measurement bias refers to systematic differences across subpopulations in the relation between observed test scores and the latent variant underlying the test scores. Comparisons of subpopulations with the same score on the latent variable can be expected to have the same observed test score. Measurement invariance is therefore one of the key issues in psychological testing. It has been established that strict factorial invariance (SFI) with respect to a selection variable V almost certainly implies weak measurement invariance with respect to V: given SFI, means and variances of observed scores do not depend on V. It is shown that this result can be extended. SFI in groups derived by selection on V has implications not only for V but also for potentially biasing variables W, if W and the selection variable V and/or if W and the factor underlying the observed test scores are statistically dependent. Given SFI with respect to V and prior knowledge concerning these dependencies, it is not necessary to measure and model variables W in order to exclude them as potentially biasing variables if the investigation focuses on groups selected on V.
测量偏差是指在观察到的测试分数与测试分数背后的潜在变量之间的关系上,不同亚群体之间存在的系统差异。对于潜在变量得分相同的亚群体进行比较时,可以预期它们具有相同的观察到的测试分数。因此,测量不变性是心理测试中的关键问题之一。已经确定,相对于选择变量V的严格因子不变性(SFI)几乎肯定意味着相对于V的弱测量不变性:给定SFI,观察分数的均值和方差不依赖于V。研究表明,这一结果可以扩展。通过对V进行选择而形成的组中的SFI不仅对V有影响,而且对潜在的偏差变量W也有影响,如果W与选择变量V和/或如果W与观察到的测试分数背后的因子在统计上相关。给定相对于V的SFI以及关于这些相关性的先验知识,如果调查集中在根据V选择的组上,则无需测量和建模变量W以将其作为潜在偏差变量排除。