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Inference of Autoregressive Model with Stochastic Exogenous Variable Under Short-Tailed Symmetric Distributions

机译:短尾对称分布下带有随机外生变量的自回归模型的推论

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摘要

In classical autoregressive models, it is assumed that the disturbances are normally distributed and the exogenous variable is non-stochastic. However, in practice, short-tailed symmetric disturbances occur frequently and exogenous variable is actually stochastic. In this paper, estimation of the parameters in autoregressive models with stochastic exogenous variable and non-normal disturbances both having short-tailed symmetric distribution is considered. This is the first study in this area as known to the authors. In this situation, maximum likelihood estimation technique is problematic and requires numerical solution which may have convergence problems and can cause bias. Besides, statistical properties of the estimators can not be obtained due to non-explicit functions. It is also known that least squares estimation technique yields neither efficient nor robust estimators. Therefore, modified maximum likelihood estimation technique is utilized in this study. It is shown that the estimators are highly efficient, robust to plausible alternatives having different forms of symmetric short-tailedness in the sample and explicit functions of data overcoming the necessity of numerical solution. A real life application is also given.
机译:在经典的自回归模型中,假设干扰是正态分布的,并且外生变量是非随机的。然而,实际上,短尾对称扰动经常发生,并且外生变量实际上是随机的。本文考虑具有随机外生变量和非正态扰动且均具有短尾对称分布的自回归模型的参数估计。这是作者所知的这方面的第一项研究。在这种情况下,最大似然估计技术是有问题的,需要数值解决方案,这可能会有收敛问题并可能导致偏差。此外,由于非显式函数,无法获得估计量的统计属性。还已知最小二乘估计技术既不产生有效的估计值也不产生鲁棒的估计值。因此,本研究利用改进的最大似然估计技术。结果表明,估计器是高效的,对样本中具有不同形式的对称短尾和数据显式功能的合理选择具有鲁棒性,从而克服了数值解的必要性。还给出了现实生活中的应用程序。

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