Functional Coefficient Nonstationary Regression

Jiti Gao, P. Phillips
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引用次数: 12

Abstract

This paper studies a general class of nonlinear varying coefficient time series models with possible nonstationarity in both the regressors and the varying coffiecient components. The model accommodates a cointegrating structure and allows for endogeneity with contemporaneous correlation among the regressors, the varying coefficient drivers, and the residuals. This framework allows for a mixture of stationary and non-stationary data and is well suited to a variety of models that are commonly used in applied econometric work. Nonparametric and semiparametric estimation methods are proposed to estimate the varying coefficient functions. The analytical findings reveal some important differences, including convergence rates, that can arise in the conduct of semiparametric regression with nonstationary data. The results include some new asymptotic theory for nonlinear functionals of nonstationary and stationary time series that are of wider interest and applicability and subsume much earlier research on such systems. The finite sample properties of the proposed econometric methods are analyzed in simulations. An empirical illustration examines nonlinear dependencies in aggregate consumption function behavior in the US over the period 1960-2009.
非平稳回归
本文研究一类非线性变系数时间序列模型,该模型的回归量和变系数分量都可能具有非平稳性。该模型采用协整结构,并允许回归量、变系数驱动因素和残差之间同时相关的内生性。该框架允许平稳和非平稳数据的混合,并且非常适合应用计量经济学工作中常用的各种模型。提出了变系数函数的非参数估计和半参数估计方法。分析结果揭示了一些重要的差异,包括收敛速度,这可能出现在与非平稳数据进行半参数回归的过程中。结果包括一些新的非平稳和平稳时间序列的非线性泛函渐近理论,这些理论具有更广泛的兴趣和适用性,并包含了对这类系统的早期研究。通过仿真分析了所提出的计量方法的有限样本性质。一个实证说明检验了1960-2009年期间美国总消费函数行为的非线性依赖关系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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