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Asymptotic Properties of QML Estimators for VARMA Models with Time-dependent Coefficients

机译:具有时间相关系数的VARMA模型的QML估计的渐近性质

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This paper is about vector autoregressive-moving average models with time-dependent coefficients to represent non-stationary time series. Contrary to other papers in the univariate case, the coefficients depend on time but not on the series' length n. Under appropriate assumptions, it is shown that a Gaussian quasi-maximum likelihood estimator is almost surely consistent and asymptotically normal. The theoretical results are illustrated by means of two examples of bivariate processes. It is shown that the assumptions underlying the theoretical results apply. In the second example, the innovations are marginally heteroscedastic with a correlation ranging from -0.8 to 0.8. In the two examples, the asymptotic information matrix is obtained in the Gaussian case. Finally, the finite-sample behaviour is checked via a Monte Carlo simulation study for n from 25 to 400. The results confirm the validity of the asymptotic properties even for short series and the asymptotic information matrix deduced from the theory.
机译:本文涉及具有时间相关系数的矢量自回归移动平均模型,用于表示非平稳时间序列。与单变量情况下的其他论文相反,系数取决于时间,而不取决于序列的长度n。在适当的假设下,证明了高斯拟最大似然估计器几乎可以肯定是一致的,并且是渐近正态的。理论结果通过双变量过程的两个例子说明。结果表明,理论结果的基础假设适用。在第二个示例中,创新是边际异方差的,相关性在-0.8到0.8之间。在这两个示例中,在高斯情况下获得了渐近信息矩阵。最后,通过蒙特卡罗模拟研究对n范围从25到400的有限样本行为进行了检验。结果证实了渐近性质的有效性,即使对于短序列和从该理论推导出的渐近信息矩阵也是如此。

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