In this paper, we propose a class of low-rank panel quantile regression models which allow for unobserved slope heterogeneity over both individuals and time. We estimate the heterogeneous intercept and slope matrices via nuclear norm regularization followed by sample splitting, row- and column-wise quantile regressions and debiasing. We show that the estimators of the factors and factor loadings associated with the intercept and slope matrices are asymptotically normally distributed. In addition, we develop two specification tests: one for the null hypothesis that the slope coefficient is a constant over time and/or individuals under the case that true rank of slope matrix equals one, and the other for the null hypothesis that the slope coefficient exhibits an additive structure under the case that the true rank of slope matrix equals two. We illustrate the finite sample performance of estimation and inference via Monte Carlo simulations and real datasets.
翻译:在本文中,我们提出一组低级面板四分位回归模型,允许在个人和时间上出现未观测到的斜坡异质。我们通过核规范规范的规范化来估计各种拦截和斜坡矩阵,然后是样本分解、行和列四分位回归和偏差。我们表明,与拦截和斜坡矩阵相关的因素和要素负荷的估计因素和要素的测算器在正常情况下不时分布。此外,我们制定了两个规格测试:一个是假设斜坡系数是长期不变和(或)个人在斜坡矩阵真实等级等于一的情况下的无效假设,另一个是假设斜坡系数在斜坡矩阵真实等级等于二的情况下显示一种添加结构的无效假设。我们举例说明了通过蒙特卡洛模拟和真实数据集进行的有限估计和推断的抽样性表现。