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Testing for independence between functional time series

机译:测试功能时间序列之间的独立性

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Frequently econometricians are interested in verifying a relationship between two or more time series. Such analysis is typically carried out by causality and/or independence tests which have been well studied when the data is univariate or multivariate. Modern data though is increasingly of a high dimensional or functional nature for which Finite dimensional methods are not suitable. In the present paper we develop methodology to check the assumption that data obtained from two functional time series are independent. Our procedure is based on the norms of empirical cross covariance operators and is asymptotically validated when the underlying populations are assumed to be in a class of weakly dependent random functions which include the functional ARMA, ARCH and GARCH processes. (C) 2015 Elsevier B.V. All rights reserved.
机译:计量经济学家通常对验证两个或更多个时间序列之间的关系感兴趣。这种分析通常是通过因果关系和/或独立性测试来进行的,这些因果关系和/或独立性测试已在数据为单变量或多变量时进行了充分研究。尽管现代数据越来越具有高维或功能性,但有限维方法不适合于此。在本文中,我们开发了一种方法来检查从两个功能时间序列获得的数据是独立的假设。我们的过程基于经验交叉协方差算子的规范,当基础种群被假定为一类弱相关的随机函数(包括功能性ARMA,ARCH和GARCH过程)时,将渐近验证。 (C)2015 Elsevier B.V.保留所有权利。

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