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On Diagnostic Checking of Vector ARMA-GARCH Models with Gaussian and Student-t Innovations

机译:基于高斯和Student-t创新的向量ARMA-GARCH模型的诊断检查

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This paper focuses on the diagnostic checking of vector ARMA (VARMA) models with multivariate GARCH errors. For a fitted VARMA-GARCH model with Gaussian or Student-t innovations, we derive the asymptotic distributions of autocorrelation matrices of the cross-product vector of standardized residuals. This is different from the traditional approach that employs only the squared series of standardized residuals. We then study two portmanteau statistics, called Q 1 ( M ) and Q 2 ( M ) , for model checking. A residual-based bootstrap method is provided and demonstrated as an effective way to approximate the diagnostic checking statistics. Simulations are used to compare the performance of the proposed statistics with other methods available in the literature. In addition, we also investigate the effect of GARCH shocks on checking a fitted VARMA model. Empirical sizes and powers of the proposed statistics are investigated and the results suggest a procedure of using jointly Q 1 ( M ) and Q 2 ( M ) in diagnostic checking. The bivariate time series of FTSE 100 and DAX index returns is used to illustrate the performance of the proposed portmanteau statistics. The results show that it is important to consider the cross-product series of standardized residuals and GARCH effects in model checking.
机译:本文着重于诊断具有多变量GARCH错误的矢量ARMA(VARMA)模型。对于具有高斯或Student-t创新的拟合VARMA-GARCH模型,我们导出标准化残差的叉积矢量的自相关矩阵的渐近分布。这与仅采用标准化残差平方平方的传统方法不同。然后,我们研究两个Portmanteau统计数据,分别称为Q 1(M)和Q 2(M),以进行模型检查。提供了一种基于残差的自举方法,并证明了该方法是逼近诊断检查统计信息的有效方法。模拟用于将建议的统计数据的性能与文献中提供的其他方法进行比较。此外,我们还研究了GARCH冲击对检查拟合的VARMA模型的影响。研究了建议统计量的经验大小和功效,结果表明了在诊断检查中共同使用Q 1(M)和Q 2(M)的过程。 FTSE 100和DAX指数收益的双变量时间序列用于说明建议的波特曼统计的性能。结果表明,在模型检查中考虑标准化残差和GARCH效应的叉积序列非常重要。

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