数学
经验似然
半参数回归
估计员
条件期望
系列(地层学)
条件方差
半参数模型
非参数统计
计量经济学
统计
推论
应用数学
协变量
力矩(物理)
参数统计
条件概率分布
ARCH模型
哲学
古生物学
经典力学
物理
认识论
波动性(金融)
生物
作者
Marie Du Roy de Chaumaray,Matthieu Marbac,Valentin Patilea
摘要
The empirical likelihood inference is extended to a class of semiparametric models for stationary, weakly dependent series. A partially linear single-index regression is used for the conditional mean of the series given its past, and the present and past values of a vector of covariates. A parametric model for the conditional variance of the series is added to capture further nonlinear effects. We propose suitable moment equations which characterize the mean and variance model. We derive an empirical log-likelihood ratio which includes nonparametric estimators of several functions, and we show that this ratio behaves asymptotically as if the functions were given.
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