基于单指标模型的同质性追踪在面板数据分析中的应用

Homogeneity Pursuit in Single Index Models based Panel Data Analysis

Journal of Business & Economic Statistics · 2019
被引 24
人大 AABS 4

中文导读

提出一种嵌入同质性的单指标模型用于面板数据分析,能同时刻画个体属性和整体趋势,并开发数据驱动方法识别同质性结构、估计参数和函数,模拟和实证表现良好。

Abstract

Panel data analysis is an important topic in statistics and econometrics. Traditionally, in panel data analysis, all individuals are assumed to share the same unknown parameters, e.g. the same coefficients of covariates when the linear models are used, and the differences between the individuals are accounted for by cluster effects. This kind of modelling only makes sense if our main interest is on the global trend, this is because it would not be able to tell us anything about the individual attributes which are sometimes very important. In this paper, we propose a modelling based on the single index models embedded with homogeneity for panel data analysis, which builds the individual attributes in the model and is parsimonious at the same time. We develop a data driven approach to identify the structure of homogeneity, and estimate the unknown parameters and functions based on the identified structure. Asymptotic properties of the resulting estimators are established. Intensive simulation studies conducted in this paper also show the resulting estimators work very well when sample size is finite. Finally, the proposed modelling is applied to a public financial dataset and a UK climate dataset, the results reveal some interesting findings.

单指数模型同质性识别面板数据非参数估计