This paper considers estimating functional-coefficient models in panel quantile regression with individual effects, allowing the cross-sectional and temporal dependence for large panel observations. A latent group structure is imposed on the heterogenous quantile regression models so that the number of nonparametric functional coefficients to be estimated can be reduced considerably. With the preliminary local linear quantile estimates of the subject-specific functional coefficients, a classic agglomerative clustering algorithm is used to estimate the unknown group structure and an easy-to-implement ratio criterion is proposed to determine the group number. The estimated group number and structure are shown to be consistent. Furthermore, a post-grouping local linear smoothing method is introduced to estimate the group-specific functional coefficients, and the relevant asymptotic normal distribution theory is derived with a normalisation rate comparable to that in the literature. The developed methodologies and theory are verified through a simulation study and showcased with an application to house price data from UK local authority districts, which reveals different homogeneity structures at different quantile levels.
翻译:本文考虑在带有个体效应的面板分位数回归中估计功能系数模型,允许大规模面板观测的横向和时间依赖。对异质性分位数回归模型施加潜在的群组结构,从而可以大大减少需要估计的非参数功能系数的数量。通过主观特定的功能系数的初步局部线性分位数估计,采用经典的凝聚聚类算法来估计未知的群组结构,并提出易于实现的比率准则来确定群组数。显示估计的群组数和结构是一致的。此外,引入了一种基于分组的局部线性平滑方法来估计群组特定的功能系数,并推导了相关的渐近正态分布理论,其标准化速率与文献中的速率相当。通过模拟研究验证了所开发的方法和理论,并应用于英国地方政府区域的房价数据,展示了不同分位数水平下不同的同质性结构。