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首页> 外文期刊>Econometric Theory >THE MOVING BLOCKS BOOTSTRAPFOR PANEL LINEAR REGRESSIONMODELS WITH INDIVIDUALFIXED EFFECTS
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THE MOVING BLOCKS BOOTSTRAPFOR PANEL LINEAR REGRESSIONMODELS WITH INDIVIDUALFIXED EFFECTS

机译:具有独立固定效应的面板线性回归模型的移动块自举

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摘要

In this paper we propose a bootstrap method for panel data linear regression models with individual fixed effects. The method consists of applying the standard moving blocks bootstrap of Ktinsch (1989, Annals of Statistics 17, 1217-1241) and Liu and Singh (1992, in R. LePage & L. Billiard (eds.), Exploring the Limits of the Bootstrap) to the vector containing all the individual observations at each point in time. We show that this bootstrap is robust to serial and cross-sectional dependence of unknown form under the assumption that n (the cross-sectional dimension) is an arbitrary nondecreasing function of T (the time series dimension), where T → ∞, thus allowing for the possibility that both n and T diverge to infinity. The time series dependence is assumed to be weak (of the mixing type), but we allow the cross-sectional dependence to be either strong or weak (including the case where it is absent). Under appropriate conditions, we show that the fixed effects estimator (and also its bootstrap analogue) has a convergence rate that depends on the degree of cross-section dependence in the panel. Despite this, the same stu-dentized test statistics can be computed without reference to the degree of cross-section dependence. Our simulation results show that the moving blocks bootstrap percentile-? intervals have very good coverage properties even when the degree of serial and cross-sectional correlation is large, provided the block size is appropriately chosen.
机译:在本文中,我们为具有单独固定效应的面板数据线性回归模型提出了一种自举方法。该方法包括应用R.LePage和L.Billiard(ed。)的Ktinsch(1989年,统计年鉴17,1217-1241)和Liu和Singh(1992年)的标准移动块引导程序,探讨引导程序的极限)到包含每个时间点所有单独观察值的向量。我们证明,在假设n(横截面尺寸)是T(时间序列尺寸)的任意非递减函数的情况下,该引导程序对未知形式的序列和横截面依赖性具有鲁棒性,其中T→∞,因此允许因为n和T都发散到无穷大。假设时间序列相关性很弱(属于混合类型),但我们允许横截面相关性强或弱(包括不存在的情况)。在适当的条件下,我们表明固定效应估计量(及其引导程序类似物)的收敛速度取决于面板中横截面依赖性的程度。尽管如此,无需参考横截面依赖性的程度,即可计算出相同的学生测试统计量。我们的仿真结果表明,移动块自举百分位数?即使适当地选择块大小,即使当序列和横截面相关程度大时,该间隔也具有非常好的覆盖属性。

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