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首页> 外文期刊>Journal of Econometrics >Robust penalized quantile regression estimation for panel data
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Robust penalized quantile regression estimation for panel data

机译:面板数据的鲁棒惩罚分位数回归估计

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This paper investigates a class of penalized quantile regression estimators for panel data. The penalty serves to shrink a vector of individual specific effects toward a common value. The degree of this shrinkage is controlled by a tuning parameter X.It is shown that the class of estimators is asymptotically unbiased and Gaussian, when the individual effects are drawn from a class of zero-median distribution functions. The tuning parameter, lambda, can thus be selected to minimize estimated asymptotic variance. Monte Carlo evidence reveals that the estimator can significantly reduce the variability of the fixed-effect version of the estimator without introducing bias.
机译:本文研究了用于面板数据的一类惩罚分位数回归估计量。惩罚用于将单个特定效果的向量缩小到一个公共值。收缩程度由调整参数X控制。表明,当从一类零中值分布函数中提取各个效应时,估计量的类是渐近无偏的和高斯的。因此,可以选择调节参数λ来最小化估计的渐近方差。蒙特卡洛证据表明,该估计量可以在不引入偏差的情况下显着降低该固定量估计量的可变性。

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