Test of hypotheses in panel data models when the regressor and disturbances are possibly non-stationary

被引:0
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作者
Badi H. Baltagi
Chihwa Kao
Sanggon Na
机构
[1] Syracuse University,Center for Policy Research
[2] Syracuse University,Department of Economics
来源
关键词
Ordinary Little Square; Panel Data; Generalize Little Square; Panel Data Model; Disturbance Term;
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摘要
This paper considers the problem of hypothesis testing in a simple panel data regression model with random individual effects and serially correlated disturbances. Following Baltagi et al. (Econom. J. 11:554–572, 2008), we allow for the possibility of non-stationarity in the regressor and/or the disturbance term. While Baltagi et al. (Econom. J. 11:554–572, 2008) focus on the asymptotic properties and distributions of the standard panel data estimators, this paper focuses on testing of hypotheses in this setting. One important finding is that unlike the time-series case, one does not necessarily need to rely on the “super-efficient” type AR estimator by Perron and Yabu (J. Econom. 151:56–69, 2009) to make an inference in the panel data. In fact, we show that the simple t-ratio always converges to the standard normal distribution, regardless of whether the disturbances and/or the regressor are stationary.
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页码:329 / 350
页数:21
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