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Pairwise Likelihood Ratio Tests and Model Selection Criteria for Structural Equation Models with Ordinal Variables

机译:具有序数变量的结构方程模型的成对似然比检验和模型选择准则

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摘要

Correlated multivariate ordinal data can be analysed with structural equation models. Parameter estimation has been tackled in the literature using limited-information methods including three-stage least squares and pseudo-likelihood estimation methods such as pairwise maximum likelihood estimation. In this paper, two likelihood ratio test statistics and their asymptotic distributions are derived for testing overall goodness-of-fit and nested models, respectively, under the estimation framework of pairwise maximum likelihood estimation. Simulation results show a satisfactory performance of type I error and power for the proposed test statistics and also suggest that the performance of the proposed test statistics is similar to that of the test statistics derived under the three-stage diagonally weighted and unweighted least squares. Furthermore, the corresponding, under the pairwise framework, model selection criteria, AIC and BIC, show satisfactory results in selecting the right model in our simulation examples. The derivation of the likelihood ratio test statistics and model selection criteria under the pairwise framework together with pairwise estimation provide a flexible framework for fitting and testing structural equation models for ordinal as well as for other types of data. The test statistics derived and the model selection criteria are used on data on 'trust in the police' selected from the 2010 European Social Survey. The proposed test statistics and the model selection criteria have been implemented in the R package lavaan.
机译:可以使用结构方程模型分析相关的多元序数数据。文献中已经使用有限信息方法(包括三阶段最小二乘法)和伪似然估计方法(如成对最大似然估计)解决了参数估计问题。在成对最大似然估计的估计框架下,分别导出了两个似然比检验统计量及其渐近分布,以分别测试整体拟合优度和嵌套模型。仿真结果表明,对于所建议的测试统计量,I类错误和功效具有令人满意的性能,并且还表明,所建议的测试统计量的性能类似于在三级对角加权和未加权最小二乘方的情况下得出的测试统计量。此外,在成对框架下,相应的模型选择标准AIC和BIC在我们的仿真示例中显示了选择正确模型的令人满意的结果。成对框架下的似然比检验统计量和模型选择标准的推导以及成对估计为为序数以及其他类型的数据拟合和检验结构方程模型提供了灵活的框架。得出的测试统计数据和模型选择标准用于从2010年欧洲社会调查中选择的“警察信任度”数据。建议的测试统计数据和模型选择标准已在R包lavaan中实现。

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