结构方程模型拟合测度中计划缺失设计的效果评价

Psych Pub Date : 2023-09-06 DOI:10.3390/psych5030064
Paula C. R. Vicente
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引用次数: 1

摘要

在有计划的缺失设计中,无反应根据研究者的意愿发生,目的是提高数据质量,避免过于广泛的问卷调查。当结构方程模型对数据进行调整时,有不同的标准来评估理论模型对观测数据的拟合程度,其中最常见的是近似均方根误差(RMSEA)、标准化均方根残差(SRMR)、比较拟合指数(CFI)和塔克-刘易斯指数(TLI)。在这里,我探讨了在调整结构方程模型时,由于特定的计划缺失设计(三形式设计)而导致的无响应对上述拟合指标的影响。分别用正确指定的模型和错误指定的模型进行了模拟研究。CFI、TLI和SRMR指数受到不响应的影响,特别是在小样本、低因子负荷和大量观察变量的情况下。当考虑错误指定的模型时,即考虑因素之间的强相关性时,不响应的存在导致分析中所有四个拟合指标的值都不可接受。这里显示的结果是用R中的simsem包执行的,在模型拟合过程中使用全信息最大似然方法处理缺失数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluating the Effect of Planned Missing Designs in Structural Equation Model Fit Measures
In a planned missing design, the nonresponses occur according to the researcher’s will, with the goal of increasing data quality and avoiding overly extensive questionnaires. When adjusting a structural equation model to the data, there are different criteria to evaluate how the theoretical model fits the observed data, with the root mean square error of approximation (RMSEA), standardized root mean square residual (SRMR), comparative fit index (CFI) and Tucker–Lewis index (TLI) being the most common. Here, I explore the effect of the nonresponses due to a specific planned missing design—the three-form design—on the mentioned fit indices when adjusting a structural equation model. A simulation study was conducted with correctly specified model and one model with misspecified correlation between factors. The CFI, TLI and SRMR indices are affected by the nonresponses, particularly with small samples, low factor loadings and numerous observed variables. The existence of nonresponses when considering misspecified models causes unacceptable values for all the four fit indexes under analysis, namely when a strong correlation between factors is considered. The results shown here were performed with the simsem package in R and the full information maximum-likelihood method was used for handling missing data during model fitting.
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