University of Oklahoma, Norman, OK, USA.
University of South Carolina, Columbia, SC, USA.
Assessment. 2019 Oct;26(7):1217-1233. doi: 10.1177/1073191117711020. Epub 2017 Jun 9.
This study explored the impact of partial factorial invariance on cross-group comparisons of latent variables, including latent means, latent variances, structural relations (or correlations) with other constructs, and regression coefficients as predicting external variables. The results indicate that the estimates of factor mean differences are sensitive to violations of invariance on both factor loadings and intercepts. Noninvariant factor loadings were also found to influence the cross-group comparisons of factor variances and regression coefficients (slopes, in the raw metric) with external variables. However, cross-group comparisons of standardized slopes and interfactor correlations were not subject to noninvariance. Under conditions of partial invariance, we further compared the performance of four different model specification strategies. In general, fitting partially invariant models with all noninvariant parameters that were freely estimated yielded more accurate estimates of the parameters of interest. The implications of the major findings of this work, as well as recommendations and guidelines for future empirical researchers, are discussed below.
本研究探讨了部分因子不变性对潜变量(包括潜在均值、潜在方差、与其他结构的结构关系[或相关性]以及作为预测外部变量的回归系数)的跨组比较的影响。结果表明,因子均值差异的估计值对因子负荷和截距不变性的违反很敏感。还发现非不变因子负荷会影响因子方差和与外部变量的回归系数(原始度量中的斜率)的跨组比较。然而,标准化斜率和因子间相关性的跨组比较不受不变性的影响。在部分不变性的条件下,我们进一步比较了四种不同模型规范策略的性能。一般来说,拟合所有非不变参数的部分不变模型,这些参数可以自由估计,这会产生更准确的感兴趣参数的估计值。以下讨论了这项工作的主要发现的意义,以及对未来实证研究人员的建议和指南。