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Non-negativity conditions for the hyperbolic GARCH model

机译:双曲GARCH模型的非负条件

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摘要

In this article we derive conditions which ensure the non-negativity of the conditional variance in the Hyperbolic GARCH(p, d, q) (HYGARCH) model of Davidson (2004). The conditions are necessary and sufficient for p = 1 and sufficient forp > 2 and emerge as natural extensions of the inequality constraints derived in Nelson and Cao (1992) and Tsai and Chan (2008) for the GARCH model and in Conrad and Haag (2006) for the FIGARCH model. As a by-product we obtain a representation of the ARCH(oo) coefficients which allows computationally efficient multi-step-ahead forecasting of the conditional variance of a HYGARCH process. We also relate the necessary and sufficient parameter set of the HYGARCH to the necessary and sufficient parameter sets of its GARCH and FIGARCH components. Finally, we analyze the effects of erroneously fitting a FIGARCH model to a data sample which was truly generated by a HYGARCH process. Empirical applications of the HYGARCH(1, d, 1) model to daily NYSE and DAX30 data illustratethe importance of our results.
机译:在本文中,我们推导出确保Davidson(2004)的双曲GARCH(p,d,q)(HYGARCH)模型中条件方差的非负性的条件。条件对于p = 1来说是必要的,并且对于p> 2来说是足够的,并且作为不等式约束的自然扩展而出现,它们是针对GARCH模型的Nelson和Cao(1992)以及Tsai和Chan(2008)和Conrad和Haag(2006)得出的)用于FIGARCH模型。作为副产品,我们获得ARCH(oo)系数的表示形式,该表示形式允许对HYGARCH过程的条件方差进行高效计算的多步提前预测。我们还将HYGARCH的必要和充分的参数集与其GARCH和FIGARCH组件的必要和充分的参数集相关联。最后,我们分析了错误地将FIGARCH模型拟合到由HYGARCH过程真正生成的数据样本的影响。 HYGARCH(1,d,1)模型在每日NYSE和DAX30数据上的经验应用说明了我们结果的重要性。

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