带矢量数据的面板数据功能系数量子回归模型中的同质性追求

Lu Li, Yue Xia, Shuyi Ren, Xiaorong Yang
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摘要

近年来,面板数据模型的同质性识别在文献中很受欢迎。现有的大多数著作只关注完整数据的情况。本文考虑的是面板数据的函数系数量化回归模型,该模型在响应变量受到剔除时具有同质性。特别是,我们考虑了一个更一般的剔除框架,即允许模型中同时出现不同类型的剔除。为此,我们提出了一种 "三阶段 "方法,包括基于数据扩增的特定受试者函数系数的初步估计、通过聚类确定受试者的群体结构,以及聚类后的函数系数估计。我们对左删失、右删失和双删失数据进行了模拟研究,以验证所提方法的有限样本特性。仿真结果表明,我们的方法与完整数据情况下的方法性能相当。对银行股票数据的应用进一步说明了该方法的实际优势。
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Homogeneity Pursuit in the Functional-Coefficient Quantile Regression Model for Panel Data with Censored Data
Homogeneity identification of panel data models has been popular in the literature in recent years. Most of the existing works only focus on the complete data case. This paper considers a functional-coefficient quantile regression model for panel data with homogeneity when its response variables are subject to censoring. In particular, we consider a more general censoring framework, i.e. different types of censoring are allowed to occur in the model simultaneously. For this, a “three-stage” method is proposed, which includes the preliminary estimation of subject-specific function coefficients based on data augmentation, the identification of group structure over subjects by clustering, and post-grouping estimation of function coefficients. Simulation studies considering the left-, right-, and double-censored data, are carried out to verify the finite-sample properties of the proposed method. Simulation results show that our method gives comparable performance to the complete data case. The application to the bank stock data further illustrates the practical advantages of this method.
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