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Modeling of Nonrecursive Structural Equation Models With Categorical Indicators

机译:具有分类指标的非递归结构方程模型的建模

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摘要

Nonrecursive structural equation models generally take the form of feedback loops, involving 2 latent variables that are connected by 2 unidirectional paths, 1 starting with each variable and terminating in the other variable. Nonrecursive models belong to a larger class of path models that require the use of instrumental variables (IVs) to achieve model identification. Prior research has focused on SEM parameter estimation with IVs when indicators were continuous and normally distributed. Much less is known about how estimators function in the presence of categorical indicators, which are commonly used in the social sciences, such as with cognitive and affective instruments. In this study, there was specific interest in comparing the 2-stage least squares (2SLS) estimator and its categorical variant to other recommended estimators. This study compares the performance of several estimation approaches for fitting structural equation models with categorical indicator variables when IVs are necessary to obtain proper model estimates. Across conditions, 1 extension of the nonlinear 2SLS (N2SLS) approach, the nonlinear 3-stage least squares (N3SLS), which accounts for correlated errors among regressors within each model (as does the N2SLS), as well as correlations of errors across models, which N2SLS does not, appears to work the best among methods compared.
机译:非递归结构方程模型通常采用反馈回路的形式,涉及2个潜变量,这些潜变量通过2个单向路径连接,其中1个从每个变量开始,在另一个变量结束。非递归模型属于一类较大的路径模型,这些模型需要使用工具变量(IV)来实现模型识别。以前的研究集中在当指标连续且呈正态分布时使用IVs进行SEM参数估计。人们对在社会科学中常用的分类指标(如认知和情感手段)中的估计量如何发挥作用知之甚少。在这项研究中,特别有兴趣将2级最小二乘(2SLS)估计量及其分类变量与其他推荐的估计量进行比较。本研究比较了在需要IV来获取适当的模型估计量时,使用分类指标变量拟合结构方程模型的几种估计方法的性能。在各种条件下,非线性2SLS(N2SLS)方法的1扩展,非线性3级最小二乘(N3SLS),这说明了每个模型内回归变量之间的相关误差(与N2SLS一样),以及模型之间的误差相关性在所比较的方法中,N2SLS不能达到最佳效果。

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