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Generalized ARMA models with martingale difference errors

机译:mar差异误差的广义ARMA模型

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The analysis of non-Gaussian time series has been studied extensively and has many applications. Many successful models can be viewed as special cases or variations of the generalized autoregressive moving average (GARMA) models of Benjamin et al. (2003), where a link function similar to that used in generalized linear models is introduced and the conditional mean, under the link function, assumes an ARMA structure. Under such a model, the 'transformed' time series, under the same link function, assumes an ARMA form as well. Unfortunately, unless the link function is an identity function, the error sequence defined in the transformed ARMA model is usually not a martingale difference sequence. In this paper we extend the GARMA model in such a way that the resulting ARMA model in the transformed space has a martingale difference sequence as its error sequence. The benefit of such an extension are four-folds. It has easily verifiable conditions for stationarity and ergodicity; its Gaussian pseudo-likelihood estimator is consistent; standard time series model building tools are ready to use; and its MLE's asymptotic distribution can be established. We also proposes two new classes of non-Gaussian time series models under the new framework. The performance of the proposed models is demonstrated with simulated and real examples. (C) 2015 Elsevier B.V. All rights reserved.
机译:非高斯时间序列的分析已被广泛研究并具有许多应用。许多成功的模型可以看作是Benjamin等人的广义自回归移动平均(GARMA)模型的特例或变体。 (2003年),其中引入了类似于广义线性模型中使用的链接函数,并且在该链接函数下的条件均值采用ARMA结构。在这种模型下,相同链接功能下的“转换”时间序列也采用ARMA形式。不幸的是,除非链接函数是恒等函数,否则在转换后的ARMA模型中定义的错误序列通常不是not差序列。在本文中,我们以如下方式扩展GARMA模型:在转换后的空间中生成的ARMA模型具有a差序列作为其误差序列。这种扩展的好处有四方面。它具有容易验证的平稳性和遍历性条件;其高斯伪似然估计是一致的;准备使用标准时间序列模型构建工具;可以建立其MLE的渐近分布。在新框架下,我们还提出了两类新的非高斯时间序列模型。仿真和真实的例子证明了所提出模型的性能。 (C)2015 Elsevier B.V.保留所有权利。

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