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Nonparametric copula-based test for conditional independence with applications to granger causality

机译:基于非参数copula的条件独立性检验,适用于格兰杰因果关系

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摘要

This article proposes a new nonparametric test for conditional independence that can directly be applied to test for Granger causality. Based on the comparison of copula densities, the test is easy to implement because it does not involve a weighting function in the test statistic, and it can be applied in general settings since there is no restriction on the dimension of the time series data. In fact, to apply the test, only a bandwidth is needed for the nonparametric copula. We prove that the test statistic is asymptotically pivotal under the null hypothesis, establishes local power properties, and motivates the validity of the bootstrap technique that we use in finite sample settings. A simulation study illustrates the size and power properties of the test. We illustrate the practical relevance of our test by considering two empirical applications where we examine the Granger noncausality between financial variables. In a first application and contrary to the general findings in the literature, we provide evidence on two alternative mechanisms of nonlinear interaction between returns and volatilities: nonlinear leverage and volatility feedback effects. This can help better understand the well known asymmetric volatility phenomenon. In a second application, we investigate the Granger causality between stock index returns and trading volume. We find convincing evidence of linear and nonlinear feedback effects from stock returns to volume, but a weak evidence of nonlinear feedback effect from volume to stock returns. © 2012 American Statistical Association.
机译:本文针对条件独立性提出了一种新的非参数检验,可以将其直接用于检验格兰杰因果关系。基于对语系密度的比较,该测试易于实现,因为它不包含测试统计中的加权函数,并且由于对时间序列数据的大小没有限制,因此可以在常规设置中应用。实际上,要应用测试,非参数copula只需要一个带宽。我们证明了在零假设下,检验统计量是渐近关键的,建立了局部幂属性,并激发了我们在有限样本设置中使用的自举技术的有效性。仿真研究说明了测试的大小和功率特性。我们通过考虑两个经验应用程序来说明测试的实际相关性,在这两个应用程序中我们检查了金融变量之间的格兰杰非因果关系。在首次应用中,与文献中的一般发现相反,我们提供了关于收益和波动率之间非线性相互作用的两种替代机制的证据:非线性杠杆作用和波动率反馈效应。这可以帮助更好地了解众所周知的不对称波动现象。在第二个应用程序中,我们研究了股指回报率和交易量之间的格兰杰因果关系。我们发现从股票收益率到交易量的线性和非线性反馈效应的令人信服的证据,但是从交易量到股票收益率的非线性反馈效应的证据很弱。 ©2012美国统计协会。

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