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首页> 外文期刊>The Annals of Statistics: An Official Journal of the Institute of Mathematical Statistics >STATISTICAL INFERENCE FOR AUTOREGRESSIVE MODELS UNDER HETEROSCEDASTICITY OF UNKNOWN FORM
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STATISTICAL INFERENCE FOR AUTOREGRESSIVE MODELS UNDER HETEROSCEDASTICITY OF UNKNOWN FORM

机译:在未知形式的异源性下自回归模型的统计推断

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摘要

This paper provides an entire inference procedure for the autoregressive model under (conditional) heteroscedasticity of unknown form with a finite variance. We first establish the asymptotic normality of the weighted least absolute deviations estimator (LADE) for the model. Second, we develop the random weighting (RW) method to estimate its asymptotic covariance matrix, leading to the implementation of the Wald test. Third, we construct a portmanteau test for model checking, and use the RW method to obtain its critical values. As a special weighted LADE, the feasible adaptive LADE (ALADE) is proposed and proved to have the same efficiency as its infeasible counterpart. The importance of our entire methodology based on the feasible ALADE is illustrated by simulation results and the real data analysis on three U.S. economic data sets.
机译:本文为upery vAly的异源模型提供了整个推理程序,其在未知形式的未知形式的异染性。 我们首先建立了模型的加权最低绝对偏差估计估计量(LADE)的渐近常态。 其次,我们开发了随机加权(RW)方法来估算其渐近协方差矩阵,导致沃尔德考试的实施。 第三,我们构建了模型检查的portmanteau测试,并使用RW方法获取其关键值。 作为一个特殊的加权百叶,提出了可行的自适应lead(Alade),并证明具有与其不可行的对应相同的效率。 通过仿真结果和三个美国经济数据集的实际数据分析来说明了基于可行的Alade的整个方法的重要性。

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