具有非平稳非线性异方差性的非线性协整回归

Nonlinear cointegrating regressions with nonstationary nonlinear heteroskedasticity

Econometric Reviews · 2025
被引 0
人大 A-ABS 3

中文导读

研究了存在非平稳非线性异方差误差时非线性协整的参数估计,提出了加权非线性最小二乘估计量,发现其不仅一致且在某些情况下收敛速度更快,并通过去除渐近偏差实现有效估计,最后用美国宏观数据验证了消费与收入间的条件异方差性。

Abstract

This article considers the parametric estimation of nonlinear cointegration with nonstationary nonlinear heteroskedasticity (NNH). Due to the presence of NNH error, only a subset of nonlinear least squares (NLS) estimators can be shown to be consistent, with the aid of our newly proposed sequential proof strategy. To achieve estimation consistency, the weighted NLS (WNLS) estimators are further entertained, and their asymptotic properties are found to depend on the integrability of the heterogeneity-generating function. To our surprise, the WNLS estimators are not only consistent but can even enjoy accelerated convergence rates compared with their NLS counterparts under certain scenarios. We then consider efficient estimation by removing the asymptotic bias induced by the dependence between the regression errors and the innovations of integrated regressors. The resulting estimators become asymptotically mixed normal and are more efficient compared with the corresponding NLS and WNLS estimators. Finally, the Wald tests based on the above estimators are investigated, with a bootstrap procedure proposed to approximate their finite sample distributions. Simulation results suggest that the proposed estimators and tests enjoy satisfactory finite sample performance. Finally, an empirical application to the U.S. macroeconomic data demonstrates the conditional heteroskedasticity for the cointegration between the per capita real personal consumption expenditure and disposable personal income, which can be modeled as a quadratic function of the logarithm of gross domestic product.

非线性协整非平稳非线性异方差加权非线性最小二乘渐近混合正态