基于非参数级数回归的一致性设定检验

Consistent Specification Testing Via Nonparametric Series Regression

Econometrica · 1995
被引 216
人大 A+FT50ABS 4*

中文导读

提出两种用于检验参数回归模型设定是否正确的统计方法,通过非参数级数回归估计模型,新方法在模型正确时服从标准正态分布,在错误时快速发散,蒙特卡洛模拟显示其检验效果良好。

Abstract

This paper proposes two consistent one-sided specification tests for parametric regression models, one based on the sample covariance between the residual from the parametric model and the discrepancy between the parametric and nonparametric fitted values ; the other based on the difference in sums of squared residuals between the parametric and nonparametric models. We estimate the nonparametric model by series regression. The new test statistics converge in distribution to a unit normal under correct specification and grow to infinity faster than the parametric rate (n -1/2 ) under misspecification, while avoiding weighting, sample splitting, and non-nested testing procedures used elsewhere in the literature. Asymptotically, our tests can be viewed as a test of the joint hypothesis that the true parameters of a series regression model are zero, where the dependent variable is the residual from the parametric model, and the series terms are functions of the explanatory variables, chosen so as to support nonparametric estimation of a conditional expectation. We specifically consider Fourier series and regression splines, and present a Monte Carlo study of the finite sample performance of the new tests in comparison to consistent tests of Bierens (1990), Eubank and Spiegelman (1990), Jayasuriya (1990), Wooldridge (1992), and Yatchew (1992) ; the results show the new tests have good power, performing quite well in some situations. We suggest a joint Bonferroni procedure that combines a new test with those of Bierens and Wooldridge to capture the best features of the three approaches.

非参数级数回归参数模型设定检验一致单侧检验傅里叶级数