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Shrinkage Quantile Regression for Panel Data with Multiple Structural Breaks

Canadian Journal of Statistics-revue Canadienne De Statistique(2021)SCI 4区

Shanghai Univ Finance & Econ | Shandong Univ

Cited 1|Views17
Abstract
We consider a shrinkage quantile regression model for high‐dimensional panel data with multiple structural breaks. The structural breaks are assumed to be common across all individuals, but may vary across different quantile levels while sharing an identical location shift effect. We impose an L1 penalty on the individual effects and an L1‐type fusion penalty to estimate both the slope coefficients and the structural breaks by combining information at multiple quantile levels. The proposed method can detect “partial” changes of the regression coefficients and consistently estimate both the number and dates of the breaks with probability tending to 1. We establish the asymptotic properties of the proposed regression coefficient estimators as well as their post‐selection counterparts, where the dimensionality of the covariates is allowed to diverge. Simulation results demonstrate that the proposed method works well in finite‐sample cases. Using the proposed method, we obtain many interesting results by analyzing a dataset concerning environmental Kuznets curves.
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Key words
Adaptive fused LASSO,panel data,quantile regression,shrinkage,structural breaks
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要点】:本文提出了一种针对含有多重结构断点的面板数据的收缩分位数回归模型,通过结合多个分位数水平的信息,能够有效检测回归系数的“部分”变化,并估计断点的数量和日期。

方法】:文章采用了L1惩罚和L1型融合惩罚来估计斜率系数和结构断点,允许协变量的维度发散。

实验】:通过模拟实验验证了方法在有限样本情况下的有效性,并在环境库兹涅茨曲线的数据集上应用该方法得到了许多有趣的结果。