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Asymptotics of the weighted least squares estimation for AR(1) processes with applications to confidence intervals

机译:AR(1)过程的加权最小二乘估计的渐近性和置信区间的应用

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摘要

For the first-order autoregressive model, we establish the asymptotic theory of the weighted least squares estimations whether the underlying autoregressive process is stationary, unit root, near integrated or even explosive under a weaker moment condition of innovations. The asymptotic limit of this estimator is always normal. It is shown that the empirical log-likelihood ratio at the true parameter converges to the standard chi-square distribution. An empirical likelihood confidence interval is proposed for interval estimations of the autoregressive coefficient. The results improve the corresponding ones of Chan et al. (Econ Theory 28:705-717, 2012). Some simulations are conducted to illustrate the proposed method.
机译:对于一阶自回归模型,我们建立了加权最小二乘估计的渐近理论,即在创新的弱矩条件下,基本自回归过程是平稳的,单位根,接近积分的还是爆炸性的。该估计量的渐近极限总是正常的。结果表明,真实参数下的经验对数似然比收敛于标准卡方分布。提出了经验似然置信区间,用于自回归系数的区间估计。结果改进了Chan等人的相应文献。 (经济理论28:705-717,2012)。进行了一些仿真来说明所提出的方法。

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