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Testing for time-invariant unobserved heterogeneity in generalized linear models for panel data

机译:在面板数据的广义线性模型中测试时不变的未观察到的异质性

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Recent literature on panel data emphasizes the importance of accounting for time-varying unobservable individual effects, which may stem from either omitted individual characteristics or macro-level shocks that affect each individual unit differently. In this paper, we propose a simple specification test of the null hypothesis that the individual effects are time-invariant against the alternative that they are time-varying. Our test is an application of Hausman (1978) testing procedure and can be used for any generalized linear model for panel data that admits a sufficient statistic for the individual effect. This is a wide class of models which includes the Gaussian linear model and a variety of nonlinear models typically employed for discrete or categorical outcomes. The basic idea of the test is to compare two alternative estimators of the model parameters based on two different formulations of the conditional maximum likelihood method. Our approach does not require assumptions on the distribution of unobserved heterogeneity, nor it requires the latter to be independent of the regressors in the model. We investigate the finite sample properties of the test through a set of Monte Carlo experiments. Our results show that the test performs well, with small size distortions and good power properties. We use a health economics example based on data from the Health and Retirement Study to illustrate the proposed test. (C) 2014 Elsevier B.V. All rights reserved.
机译:关于面板数据的最新文献强调了考虑随时间变化的不可观察的个体效应的重要性,这可能是由于遗漏的个体特征或对每个个体单元产生不同影响的宏观冲击所致。在本文中,我们提出了一个零假设的简单规范检验,该假设中的个体效应是时不变的,而替代效应是时变的。我们的测试是Hausman(1978)测试程序的一种应用,可以用于面板数据的任何广义线性模型,只要该模型可以为个体效应提供足够的统计量。这是一类广泛的模型,包括高斯线性模型和通常用于离散或分类结果的各种非线性模型。该测试的基本思想是基于条件最大似然方法的两种不同公式,比较模型参数的两个备选估计量。我们的方法不需要假设未观察到的异质性的分布,也不需要后者独立于模型中的回归变量。我们通过一组蒙特卡洛实验研究了测试的有限样本属性。我们的结果表明,该测试性能良好,失真小,功率特性好。我们使用基于健康和退休研究数据的健康经济学示例来说明建议的测试。 (C)2014 Elsevier B.V.保留所有权利。

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