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估计和检验中介效应中的信噪比:加权综合结构方程建模与路径分析的比较。

Signal-to-Noise Ratio in Estimating and Testing the Mediation Effect: Structural Equation Modeling versus Path Analysis with Weighted Composites.

机构信息

Renmin University of China, Beijing, China.

University of Notre Dame, Notre Dame, Indiana , 46556, USA.

出版信息

Psychometrika. 2024 Sep;89(3):974-1006. doi: 10.1007/s11336-024-09975-4. Epub 2024 May 28.

Abstract

Mediation analysis plays an important role in understanding causal processes in social and behavioral sciences. While path analysis with composite scores was criticized to yield biased parameter estimates when variables contain measurement errors, recent literature has pointed out that the population values of parameters of latent-variable models are determined by the subjectively assigned scales of the latent variables. Thus, conclusions in existing studies comparing structural equation modeling (SEM) and path analysis with weighted composites (PAWC) on the accuracy and precision of the estimates of the indirect effect in mediation analysis have little validity. Instead of comparing the size on estimates of the indirect effect between SEM and PAWC, this article compares parameter estimates by signal-to-noise ratio (SNR), which does not depend on the metrics of the latent variables once the anchors of the latent variables are determined. Results show that PAWC yields greater SNR than SEM in estimating and testing the indirect effect even when measurement errors exist. In particular, path analysis via factor scores almost always yields greater SNRs than SEM. Mediation analysis with equally weighted composites (EWCs) also more likely yields greater SNRs than SEM. Consequently, PAWC is statistically more efficient and more powerful than SEM in conducting mediation analysis in empirical research. The article also further studies conditions that cause SEM to have smaller SNRs, and results indicate that the advantage of PAWC becomes more obvious when there is a strong relationship between the predictor and the mediator, whereas the size of the prediction error in the mediator adversely affects the performance of the PAWC methodology. Results of a real-data example also support the conclusions.

摘要

中介分析在理解社会和行为科学中的因果过程中起着重要作用。虽然复合得分路径分析因变量包含测量误差时会产生有偏参数估计而受到批评,但最近的文献指出,潜在变量模型参数的群体值取决于潜在变量的主观分配量表。因此,现有研究比较结构方程模型(SEM)和中介分析中加权综合路径分析(PAWC)对间接效应估计的准确性和精密度的结论几乎没有有效性。本文不是比较 SEM 和 PAWC 之间间接效应估计的大小,而是通过信噪比(SNR)来比较参数估计值,一旦确定了潜在变量的锚点,SNR 就不依赖于潜在变量的度量。结果表明,即使存在测量误差,PAWC 在估计和检验间接效应方面也比 SEM 产生更大的 SNR。通过因子得分进行路径分析几乎总是比 SEM 产生更大的 SNR。均等加权综合(EWC)的中介分析也比 SEM 更有可能产生更大的 SNR。因此,在实证研究中进行中介分析时,PAWC 在统计学上比 SEM 更有效率和更强大。本文还进一步研究了导致 SEM 产生较小 SNR 的条件,结果表明,当预测变量和中介变量之间存在强关系时,PAWC 的优势更加明显,而中介变量中的预测误差大小会对 PAWC 方法的性能产生不利影响。一个真实数据示例的结果也支持了这些结论。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/0e54/11458674/a26915c8f505/11336_2024_9975_Fig1_HTML.jpg

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