Instrumental Variable Estimation of Large Panel Data Models with Common Factors

Sebastian Kripfganz, Vasilis Sarafidis
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引用次数: 5

Abstract

This article introduces the xtivdfreg command in Stata, which implements a general Instrumental Variables (IV) approach for estimating large panel data models with unobserved common factors or interactive effects, as developed by Norkute et al. (2020) and Cui et al. (2020a). The underlying idea of this approach is to project out the common factors from exogenous co-variates using principal components analysis, and run IV regression using de-factored co-variates as instruments. The resulting "IVDF" method is valid for models with homogeneous or heterogeneous slope coefficients, and has several advantages relative to existing popular approaches. In addition, the xtivdfreg command extends the IVDF approach in two major ways. Firstly, the algorithm accommodates estimation of unbalanced panels. Secondly, the algorithm permits highly flexible instrumentation strategies. It is shown that when one imposes zero factors, the xtivdfreg command can replicate the results of the popular ivregress Stata command. Notably, xtivdfreg also permits estimation of the two-way error components panel data model with heterogeneous slope coefficients.
具有共同因子的大面板数据模型的工具变量估计
本文介绍了Stata中的xtivdfreg命令,该命令实现了一种通用工具变量(IV)方法,用于估计由Norkute等人(2020)和Cui等人(2020a)开发的具有未观察到的共同因素或交互效应的大型面板数据模型。这种方法的基本思想是使用主成分分析从外生协变量中预测出共同因素,并使用去因子协变量作为工具运行IV回归。所得的“IVDF”方法适用于具有均匀或非均匀斜率系数的模型,并且相对于现有的流行方法具有几个优势。此外,xtivdfreg命令以两种主要方式扩展了IVDF方法。首先,该算法适应不平衡面板的估计。其次,该算法允许高度灵活的检测策略。结果表明,当施加零因子时,xtivdfreg命令可以复制流行的ivregress Stata命令的结果。值得注意的是,xtivdfreg还允许估计具有异质性斜率系数的双向误差分量面板数据模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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