部分观测因子结构的变系数面板数据模型

Chaohua Dong, Jiti Gao, B. Peng
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引用次数: 4

摘要

本文研究了具有非平稳性的变系数面板数据模型,其中采用因子结构来捕捉时不变变量随时间的不同影响。本文采用的方法填补了文献中处理混合I(1)/I(0)回归量和因子的空白。为了进行比较,我们分别考虑了这些因素可观察到或不可观察到的情况。在建立相应的理论之前,我们对所涉及的未知系数函数和未知因素提出了一种估计方法。然后,我们通过广泛的蒙特卡罗模拟来评估所提出的估计理论的有限样本性能。在实证研究中,我们运用新提出的模型和方法对美国大型商业银行的规模收益进行了研究。一些被忽视的建模问题,在文献生产计量经济学解决。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Varying-Coefficient Panel Data Models with Partially Observed Factor Structure
In this paper, we study a varying-coefficient panel data model with nonstationarity, wherein a factor structure is adopted to capture different effects of time invariant variables over time. The methodology employed in this paper fills a gap of dealing with the mixed I(1)/I(0) regressors and factors in the literature. For comparison purposes, we consider the scenarios where the factors are either observable or unobservable, respectively. We propose an estimation method for both the unknown coefficient functions involved and the unknown factors before we establish the corresponding theory. We then evaluate the finite-sample performance of the proposed estimation theory through extensive Monte Carlo simulations. In an empirical study, we use our newly proposed model and method to study the returns to scale of large commercial banks in the U.S.. Some overlooked modelling issues in the literature of production econometrics are addressed.
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