相依数据下非光滑非参数估计方程模型的估计

Estimation of non‐smooth non‐parametric estimating equations models with dependent data

Journal of Time Series Analysis · 2024
被引 0
ABS 3

中文导读

研究了弱相依数据下非光滑非参数估计方程模型的估计方法,提出了基于核平滑的广义经验似然和广义矩估计,并证明了前者更有效,同时给出了模型设定检验。

Abstract

This article considers estimation of non‐smooth possibly overidentified non‐parametric estimating equations models with weakly dependent data. The estimators are based on a kernel smoothed version of the generalized empirical likelihood and the generalized method of moments approaches. The article derives the asymptotic normality of both estimators and shows that the proposed local generalized empirical likelihood estimator is more efficient than the local generalized moment estimator unless a two‐step procedure is used. The article also proposes novel tests for the correct specification of the considered model that are shown to have power against local alternatives and are consistent against fixed alternatives. Monte Carlo simulations and an empirical application illustrate the finite sample properties and applicability of the proposed estimators and test statistics.

计量经济学非参数统计相依数据广义矩估计经验似然