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Testing the Constancy of Conditional Correlations in Multivariate GARCH-type Models (Extended Version with Appendix)

机译:在多元GARCH型模型中测试条件相关性的常数(带附录的扩展版)

摘要

We introduce two multivariate constant conditional correlation tests that require little knowledge of the functional relationship determining the conditional correlations. The first test is based on artificial neural networks and the second one is based on a Taylor expansion of each unknown conditional correlation. These new tests can be seen as general misspecification tests of a large set of multivariate GARCH-type models. We investigate the size and the power of these tests through Monte Carlo experiments. Moreover, we study their robustness to non-normality by simulating some models such as the GARCH−t and Beta−t−EGARCH models. We give some illustrative empirical examples based on financial data.
机译:我们介绍了两个多变量恒定条件相关测试,这些测试几乎不需要确定条件相关的函数关系。第一个测试基于人工神经网络,第二个测试基于每个未知条件相关的泰勒展开。这些新测试可以看作是大量多变量GARCH类型模型的一般错误指定测试。我们通过蒙特卡洛实验研究了这些测试的规模和功效。此外,我们通过模拟一些模型,例如GARCH-t和Beta-t-EGARCH模型,研究了它们对非正态性的鲁棒性。我们基于财务数据给出一些说明性的经验示例。

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