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首页> 外文期刊>Journal of Multivariate Analysis: An International Journal >HAC estimation and strong linearity testing in weak ARMA models
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HAC estimation and strong linearity testing in weak ARMA models

机译:弱ARMA模型中的HAC估计和强线性测试

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In the framework of ARMA models, we consider testing the reliability of the standard asymptotic covariance matrix (ACM) of the least-squares estimator. The standard formula for this ACM is derived under the assumption that the errors are independent and identically distributed, and is in general invalid when the errors are only uncorrelated. The test statistic is based on the difference between a conventional estimator of the ACM of the least-squares estimator of the ARMA coefficients and its robust HAC-type version. The asymptotic distribution of the HAC estimator is established under the null hypothesis of independence, and under a large class of alternatives. The asymptotic distribution of the proposed statistic is shown to be a standard chi(2) under the null, and a noncentral chi(2) under the alternatives. The choice of the HAC estimator is discussed through asymptotic power comparisons. The finite sample properties of the test are analyzed via Monte Carlo simulation. (C) 2006 Elsevier Inc. All rights reserved.
机译:在ARMA模型的框架中,我们考虑测试最小二乘估计量的标准渐近协方差矩阵(ACM)的可靠性。此ACM的标准公式是在假设误差是独立且均匀分布的前提下得出的,并且通常在误差不相关时通常无效。检验统计量基于ARMA系数的最小二乘估计器的ACM的传统估计器与其健壮的HAC类型版本之间的差异。 HAC估计量的渐近分布是根据独立性的零假设和大量替代选择建立的。拟议统计量的渐近分布显示为空值下的标准chi(2),而替代值下为非中心chi(2)。通过渐近功效比较讨论了HAC估计量的选择。通过蒙特卡洛模拟分析测试的有限样本属性。 (C)2006 Elsevier Inc.保留所有权利。

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