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A test for constant correlations in a multivariate GARCH model

机译:多元GARCH模型中常数相关性的检验

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We introduce a Lagrange Multiplier (LM) test for the constant-correlation hypothesis in a multivariate GARCH model. The test examines the restrictions imposed on a model which encompasses the constant-correlation multivariate GARCH model. It requires the estimates of the constant-correlation model only and is computationally convenient. We report some Monte Carlo results on the finite-sample properties of the LM statistic. The LM test is compared against the Information Matrix (IM) test due to Bera and Kim (1996). The LM test appears to have good power against the alternatives considered and is more robust to nonnormality. We apply the test to three data sets, namely, spot-futures prices, foreign exchange rates and stock market returns. The results show that the spot-futures and foreign exchange data have constant correlations. While the correlations across national stock market returns are time varying.
机译:我们针对多元GARCH模型中的恒定相关假设引入了Lagrange乘数(LM)检验。该测试检查了对包含常数相关多元GARCH模型的模型施加的限制。它仅需要常数相关模型的估计,并且计算方便。我们报告了有关LM统计量的有限样本属性的一些蒙特卡洛结果。将LM检验与Bera和Kim(1996)提出的信息矩阵(IM)检验进行比较。 LM测试似乎对所考虑的替代品具有良好的抵抗力,并且对非正态性更强健。我们将该检验应用于三个数据集,即现货期货价格,汇率和股票市场收益。结果表明,现货期货和外汇数据具有恒定的相关性。尽管全国股票市场回报的相关性是随时间变化的。

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