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A consistent nonparametric test for nonlinear causality—Specification in time series regression

机译:非线性因果关系的一致非参数检验—时间序列回归中的规定

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摘要

Since the pioneering work by Granger (1969), many authors have proposed tests of causality between economic time series. Most of them are concerned only with "linear causality in mean", or if a series linearly affects the (conditional) mean of the other series. It is no doubt of primary interest, but dependence between series may be nonlinear, and/or not only through the conditional mean. Indeed conditional heteroskedastic models are widely studied recently. The purpose of this paper is to propose anonparametric test for possibly nonlinear causality. Taking into account that dependence in higher order moments are becoming an important issue especially in financial time series, we also consider a test for causality up to the Kth conditional moment.Statistically, we can also view this test as a nonparametric omitted variable test in time series regression. A desirable property of the test is that it has nontrivial power against I1/2-locaI alternatives, where T is the sample size. Also, we can forma test statistic accordingly if we have some knowledge on the alternative hypothesis. Furthermore, we show that the test statistic includes most of the omitted variable test statistics as special cases asymptotically. The null asymptotic distribution isnot normal, but we can easily calculate the critical regions by simulation. Monte Carlo experiments show that the proposed test has good size and power properties.
机译:自Granger(1969)的开创性工作以来,许多作者提出了检验经济时间序列之间因果关系的检验方法。他们中的大多数只关注“均值线性因果关系”,或者一个系列线性影响另一个系列的(条件)均值。毫无疑问,这是主要的兴趣,但是级数之间的依赖关系可能是非线性的,并且/或者不仅是通过条件均值。实际上,最近已经广泛研究了条件异方差模型。本文的目的是为可能的非线性因果关系提出非参数检验。考虑到高阶矩的依赖性正成为一个重要问题,尤其是在金融时间序列中,我们还考虑了直到第K个条件矩的因果关系检验。从统计上讲,我们还可以将该检验视为时间上的非参数遗漏变量检验级数回归。该测试的理想属性是,它对I1 / 2-locaI替代品具有非平凡的功效,其中T是样本量。同样,如果我们对替代假设有一定的了解,我们可以据此对检验统计量进行形式化。此外,我们证明了检验统计量渐近地包含了大多数被省略的变量检验统计量,作为特殊情况。零渐近分布不是正态分布,但我们可以通过仿真轻松地计算出临界区域。蒙特卡洛实验表明,提出的测试具有良好的尺寸和功率特性。

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