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Nonstationary nonlinear heteroskedasticity

机译:非平稳非线性异方差

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In this paper, we consider time series with the conditional heteroskedasticities that are given by nonlinear functions of integrated processes. Such time series are said to have nonlinear nonstationary heteroskedasticity (NNH), and the functions generating conditional heterogeneity are called heterogeneity generating functions (HGF's). Various statistical properties of time series with NNH are investigated for a wide class of HGF's. For NNH models with a variety of HGF's, volatility clustering andleptokurtosis, which are common features of ARCH type models, are manifest. In particular, it is shown that the sample autocorrelations of their squared processes vanish only very slowly, or do not even vanish at all, in the limit. Volatility clusteringis therefore well expected. The NNH models with certain types of HGF's indeed have sample characteristics that are very similar to those of ARCH type models. Moreover, the sample kurtosis of the NNH model either diverges or has a stable limiting distribution with support truncated on the left by the kurtosis of the innovations. This would.well explain the presence of leptokurtosis in many observed time series data. To illustrate the empirical relevancy of our model, we analyze the spreads between the forward and spot rates of USD/DM exchange rates. It is found that the conditional variances of the spreads can be well modelled as a nonlinear function of the levels of the spot rates.
机译:在本文中,我们考虑具有条件异方差的时间序列,该条件由集成过程的非线性函数给出。此类时间序列据说具有非线性非平稳异方差性(NNH),并且产生条件异质性的函数称为异质性产生函数(HGF)。对于广泛的HGF,研究了NNH时间序列的各种统计特性。对于具有各种HGF的NNH模型,明显表现出ARCH型模型的常见特征是波动性聚类和瘦峰。特别地,显示出其平方过程的样本自相关仅在极限内非常缓慢地消失,或什至完全消失。因此,波动性聚类是很好的预期。具有某些类型的HGF的NNH模型确实具有与ARCH类型模型非常相似的样本特征。此外,NNH模型的样本峰度要么发散,要么具有稳定的极限分布,其支持因创新的峰度而在左侧被截断。这将很好地解释在许多观察到的时间序列数据中均存在瘦峰现象。为了说明我们模型的经验相关性,我们分析了美元/德国马克汇率的远期汇率与即期汇率之间的价差。发现可以很好地将点差的条件方差建模为即期汇率水平的非线性函数。

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