灵活非线性推断的参数化方法

A Parametric Approach to Flexible Nonlinear Inference

Econometrica · 2001
被引 208
人大 A+FT50ABS 4*

中文导读

提出一个参数化框架,用于判断关系是否非线性、刻画非线性形态,并检验线性假设;通过将未知函数视为随机场实现,用极大似然或贝叶斯方法估计,并应用于通胀-失业权衡的非线性分析。

Abstract

This paper proposes a new framework for determining whether a given relationship is nonlinear, what the nonlinearity looks like, and whether it is adequately described by a particular parametric model. The paper studies a regression or forecasting model of the form yt=μ(xt)+εt where the functional form of μ(⋅) is unknown. We propose viewing μ(⋅) itself as the outcome of a random process. The paper introduces a new stationary random field m(⋅) that generalizes finite-differenced Brownian motion to a vector field and whose realizations could represent a broad class of possible forms for μ(⋅). We view the parameters that characterize the relation between a given realization of m(⋅) and the particular value of μ(⋅) for a given sample as population parameters to be estimated by maximum likelihood or Bayesian methods. We show that the resulting inference about the functional relation also yields consistent estimates for a broad class of deterministic functions μ(⋅). The paper further develops a new test of the null hypothesis of linearity based on the Lagrange multiplier principle and small-sample confidence intervals based on numerical Bayesian methods. An empirical application suggests that properly accounting for the nonlinearity of the inflation-unemployment trade-off may explain the previously reported uneven empirical success of the Phillips Curve.

非线性推断随机场线性检验贝叶斯方法