结构方程建模

Wayne H. Crawford, Esther Lamarre Jean
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引用次数: 2

摘要

结构方程建模(SEM)是一组模型,其中多变量技术用于同时检查变量之间的复杂关系。SEM的目标是评估所提出的关系在多大程度上反映了数据中存在的实际关系模式。SEM用户使用专门的软件来开发模型,然后生成模型隐含的协方差矩阵。模型隐含协方差矩阵基于用户定义的理论模型,代表用户对变量之间关系的信念。SEM软件在用户预定义约束的指导下,采用因子分析和回归相结合的方法生成一组参数(通常通过最大似然[ML]估计),以创建模型隐含的协方差矩阵,该矩阵表示模型中包含的变量之间的关系。结构方程建模利用因子分析和路径分析技术的优势来解决复杂的研究问题。结构方程建模包括六个基本步骤:模型规范;识别;估计;模型拟合评价;模型修改;报告结果。进行SEM分析需要考虑某些数据,因为与数据相关的问题通常是导致软件失败的原因。这些考虑包括样本量,多变量正态性的数据筛选,检查异常值和多重共线性,以及评估缺失数据。此外,SEM用户可能会遇到三个值得注意的问题,包括通用方法方差、主观性和透明度,以及可选模型测试。首先,分析常用方法方差包括识别三种类型的方差:常用方差(与因子共享的方差);特定方差(不能被共同因素解释的可靠方差);以及误差方差(变量中不可靠且无法解释的变化)。其次,SEM在建模过程中仍然缺乏明确的指导方针,这将威胁到可复制性。决策通常是主观的,并且基于研究人员的偏好和对实现最佳整体模型最合适的知识的了解。最后,报告假设模型的替代方案是SEM用户在分析结构方程模型时应该考虑的另一个问题。当测试假设模型时,SEM用户应该考虑从约束或消除假设模型中的一条或多条路径派生的替代(嵌套)模型。替代模式提供了几个好处;但是,它们应该得到现有理论的推动和支持。重要的是,研究人员要清楚地报告和提供关于测试的替代模型的发现。SEM的用户经常会遇到常见的特定于模型的问题。海伍德情况下,非识别和非正定矩阵是其中最常见的问题。当在结果中发现负方差或大于1.0的平方倍数相关时,就会出现Heywood病例。研究人员可以通过考虑一个小的可信值来约束残差来解决这个问题。非正定矩阵由线性依赖和/或大于1.0的相关性产生。为了解决这个问题,研究人员可以尝试确保所有指标变量都是独立的,手动检查输出的负残差,评估样本大小是否合适,或者重新指定提出的模型。如果使用得当,结构方程建模是一个强大的工具,可以同时测试复杂的模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Structural Equation Modelling
Structural equation modelling (SEM) is a family of models where multivariate techniques are used to examine simultaneously complex relationships among variables. The goal of SEM is to evaluate the extent to which proposed relationships reflect the actual pattern of relationships present in the data. SEM users employ specialized software to develop a model, which then generates a model-implied covariance matrix. The model-implied covariance matrix is based on the user-defined theoretical model and represents the user’s beliefs about relationships among the variables. Guided by the user’s predefined constraints, SEM software employs a combination of factor analysis and regression to generate a set of parameters (often through maximum likelihood [ML] estimation) to create the model-implied covariance matrix, which represents the relationships between variables included in the model. Structural equation modelling capitalizes on the benefits of both factor analysis and path analytic techniques to address complex research questions. Structural equation modelling consists of six basic steps: model specification; identification; estimation; evaluation of model fit; model modification; and reporting of results. Conducting SEM analyses requires certain data considerations as data-related problems are often the reason for software failures. These considerations include sample size, data screening for multivariate normality, examining outliers and multicollinearity, and assessing missing data. Furthermore, three notable issues SEM users might encounter include common method variance, subjectivity and transparency, and alternative model testing. First, analyzing common method variance includes recognition of three types of variance: common variance (variance shared with the factor); specific variance (reliable variance not explained by common factors); and error variance (unreliable and inexplicable variation in the variable). Second, SEM still lacks clear guidelines for the modelling process which threatens replicability. Decisions are often subjective and based on the researcher’s preferences and knowledge of what is most appropriate for achieving the best overall model. Finally, reporting alternatives to the hypothesized model is another issue that SEM users should consider when analyzing structural equation models. When testing a hypothesized model, SEM users should consider alternative (nested) models derived from constraining or eliminating one or more paths in the hypothesized model. Alternative models offer several benefits; however, they should be driven and supported by existing theory. It is important for the researcher to clearly report and provide findings on the alternative model(s) tested. Common model-specific issues are often experienced by users of SEM. Heywood cases, nonidentification, and nonpositive definite matrices are among the most common issues. Heywood cases arise when negative variances or squared multiple correlations greater than 1.0 are found in the results. The researcher could resolve this by considering a small plausible value that could be used to constrain the residual. Non-positive definite matrices result from linear dependencies and/or correlations greater than 1.0. To address this, researchers can attempt to ensure all indicator variables are independent, inspect output manually for negative residual variances, evaluate if sample size is appropriate, or re-specify the proposed model. When used properly, structural equation modelling is a powerful tool that allows for the simultaneous testing of complex models.
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