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首页> 外文期刊>Psychometrika >Profile Likelihood-Based Confidence Intervals and Regions for Structural Equation Models
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Profile Likelihood-Based Confidence Intervals and Regions for Structural Equation Models

机译:基于轮廓似然的置信区间和区域的结构方程模型

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摘要

Structural equation models (SEM) are widely used for modeling complex multivariate relationships among measured and latent variables. Although several analytical approaches to interval estimation in SEM have been developed, there lacks a comprehensive review of these methods. We review the popular Wald-type and lesser known likelihood-based methods in linear SEM, emphasizing profile likelihood-based confidence intervals (CIs). Existing algorithms for computing profile likelihood-based CIs are described, including two newer algorithms which are extended to construct profile likelihood-based confidence regions (CRs). Finally, we illustrate the use of these CIs and CRs with two empirical examples, and provide practical recommendations on when to use Wald-type CIs and CRs versus profile likelihood-based CIs and CRs. OpenMx example code is provided in an Online Appendix for constructing profile likelihood-based CIs and CRs for SEM.
机译:结构方程模型(SEM)已广泛用于对测量变量和潜在变量之间的复杂多元关系进行建模。尽管已经开发了几种在SEM中进​​行间隔估计的分析方法,但对这些方法缺乏全面的综述。我们在线性SEM中回顾了流行的Wald型和鲜为人知的基于似然性的方法,强调了基于轮廓似然性的置信区间(CIs)。描述了用于计算基于轮廓似然度的CI的现有算法,包括两个更新的算法,这些算法被扩展以构造基于轮廓似然度的置信区域(CR)。最后,我们通过两个经验示例说明了这些CI和CR的用法,并提供了有关何时使用Wald型CI和CR与基于概貌似然的CI和CR的实用建议。在线附录中提供了OpenMx示例代码,用于为SEM构建基于轮廓似然的CI和CR。

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