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Residual-based rank specification tests for AR-GARCH type models

机译:基于残差的AR-GARCH类型模型的等级规范测试

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This paper derives the asymptotic distribution for a number of rank-based and classical residual specification tests in AR-GARCH type models. We consider tests for the null hypotheses of no linear and quadratic serial residual autocorrelation, residual symmetry, and no structural breaks. We also apply our method to backtesting Value-at-Risk. For these tests we show that, generally, no size correction is needed in the asymptotic test distribution when applied to AR-GARCH residuals obtained through Gaussian quasi maximum likelihood estimation. To be precise, we give exact expressions for the limiting null distribution of the test statistics applied to (standardized) residuals, and find that standard critical values often, though not always, lead to conservative tests. For this result, we give simple necessary and sufficient conditions. Simulations show that our asymptotic approximations work well for a large number of AR-GARCH models and parameter values. We also show that the rank-based tests often, though not always, have superior power properties over the classical tests, even if they are conservative. An empirical application illustrates the relevance of these tests to the AR-GARCH models for weekly stock market return indices of some major and emerging countries. (C) 2015 Published by Elsevier B.V.
机译:本文推导了AR-GARCH类型模型中许多基于秩和经典残差规范测试的渐近分布。我们考虑对没有线性和二次序列残差自相关,残差对称性以及没有结构破坏的零假设进行检验。我们还将我们的方法应用于风险价值的回测。对于这些检验,我们表明,通常,当将其应用于通过高斯拟最大似然估计获得的AR-GARCH残差时,渐近检验分布中不需要尺寸校正。确切地说,我们给出了适用于(标准化)残差的检验统计量的有限零分布的精确表达式,并发现标准临界值经常(尽管并非总是)导致进行保守检验。对于此结果,我们给出简单的必要条件和充分条件。仿真表明,对于许多AR-GARCH模型和参数值,我们的渐近逼近效果很好。我们还表明,基于等级的测试即使不是很保守,但往往会比传统测试具有更好的功效,即使它们是保守的。经验应用说明了这些检验与一些主要国家和新兴国家每周股票市场收益指数的AR-GARCH模型的相关性。 (C)2015由Elsevier B.V.发布

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