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Efficient semiparametric estimation in time-varying regression models

机译:时变回归模型中的有效半参数估计

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We study semiparametric inference in some linear regression models with time-varying coefficients, dependent regressors and dependent errors. This problem, which has been considered recently by Zhang and Wu [Inference of time-varying regression models. Ann Statist. 2012;40:1376-1402] under the functional dependence measure, is interesting for parsimony reasons or for testing stability of some coefficients in a linear regression model. In this paper, we propose a different procedure for estimating non-time-varying parameters at the rate, in the spirit of the method introduced by Robinson [Root-n-consistent semiparametric regression. Econometrica. 1988;56:931-954] for partially linear models. When the errors in the model are martingale differences, this approach can lead to more efficient estimates than the method considered in Zhang and Wu [Inference of time-varying regression models. Ann Statist. 2012;40:1376-1402]. For a time-varying AR process with exogenous covariates and conditionally Gaussian errors, we derive a notion of efficient information matrix from a convolution theorem adapted to triangular arrays. For independent but non-identically distributed Gaussian errors, we construct an asymptotically efficient estimator in a semiparametric sense.
机译:我们在一些具有时变系数,相关回归变量和相关误差的线性回归模型中研究半参数推理。这个问题,最近由Zhang和Wu考虑过[时变回归模型的推论。安统计学家。 [2012; 40:1376-1402]下的函数相关性度量,出于简约原因或测试线性回归模型中某些系数的稳定性而很有趣。在本文中,我们根据Robinson [Root-n-consistent半参数回归法]引入的方法的精神,提出了一种以一定速率估算非时变参数的方法。计量经济学。 1988; 56:931-954]。当模型中的误差是mar差异时,与Zhang和Wu [时变回归模型的推论]中所考虑的方法相比,这种方法可以导致更有效的估计。安统计学家。 2012; 40:1376-1402]。对于带有外协变量和条件高斯误差的时变AR过程,我们从适用于三角阵列的卷积定理中得出有效信息矩阵的概念。对于独立但不相同分布的高斯误差,我们在半参数意义上构造了一个渐近有效的估计器。

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