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混合指标的工具变量估计器:分析导数和替代参数化。

An Instrumental Variable Estimator for Mixed Indicators: Analytic Derivatives and Alternative Parameterizations.

机构信息

University of North Carolina at Chapel Hill, Chapel Hill, USA.

出版信息

Psychometrika. 2020 Sep;85(3):660-683. doi: 10.1007/s11336-020-09721-6. Epub 2020 Aug 24.

Abstract

Methodological development of the model-implied instrumental variable (MIIV) estimation framework has proved fruitful over the last three decades. Major milestones include Bollen's (Psychometrika 61(1):109-121, 1996) original development of the MIIV estimator and its robustness properties for continuous endogenous variable SEMs, the extension of the MIIV estimator to ordered categorical endogenous variables (Bollen and Maydeu-Olivares in Psychometrika 72(3):309, 2007), and the introduction of a generalized method of moments estimator (Bollen et al., in Psychometrika 79(1):20-50, 2014). This paper furthers these developments by making several unique contributions not present in the prior literature: (1) we use matrix calculus to derive the analytic derivatives of the PIV estimator, (2) we extend the PIV estimator to apply to any mixture of binary, ordinal, and continuous variables, (3) we generalize the PIV model to include intercepts and means, (4) we devise a method to input known threshold values for ordinal observed variables, and (5) we enable a general parameterization that permits the estimation of means, variances, and covariances of the underlying variables to use as input into a SEM analysis with PIV. An empirical example illustrates a mixture of continuous variables and ordinal variables with fixed thresholds. We also include a simulation study to compare the performance of this novel estimator to WLSMV.

摘要

模型隐含工具变量(MIIV)估计框架的方法学发展在过去三十年中已经取得了丰硕的成果。主要的里程碑包括 Bollen(Psychometrika 61(1):109-121, 1996)最初开发的 MIIV 估计器及其对连续内生变量 SEM 的稳健性特性,将 MIIV 估计器扩展到有序分类内生变量(Bollen 和 Maydeu-Olivares in Psychometrika 72(3):309, 2007),以及引入广义矩估计器(Bollen 等人,在 Psychometrika 79(1):20-50, 2014)。本文通过做出几个在先前文献中没有的独特贡献,进一步推进了这些发展:(1)我们使用矩阵微积分推导出 PIV 估计器的解析导数,(2)我们将 PIV 估计器扩展到适用于任何二进制、有序和连续变量的混合,(3)我们将 PIV 模型推广到包括截距和均值,(4)我们设计了一种方法来输入有序观测变量的已知阈值,以及(5)我们启用了一种通用参数化,允许使用潜在变量的均值、方差和协方差进行估计,并将其用作 PIV 分析的 SEM 的输入。一个实证例子说明了混合连续变量和有序变量与固定阈值。我们还包括一项模拟研究,比较了这个新估计器与 WLSMV 的性能。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ede6/7774592/7f2d2478e615/nihms-1623192-f0001.jpg

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