Otneim Håkon, Berentsen Geir Drage, Tjøstheim Dag
Department of Business and Management Science, Norwegian School of Economics, 5045 Bergen, Norway.
Department of Mathematics, University of Bergen, 7803 Bergen, Norway.
Entropy (Basel). 2022 Mar 8;24(3):378. doi: 10.3390/e24030378.
The Granger causality test is essential for detecting lead-lag relationships between time series. Traditionally, one uses a linear version of the test, essentially based on a linear time series regression, itself being based on autocorrelations and cross-correlations of the series. In the present paper, we employ a local Gaussian approach in an empirical investigation of lead-lag and causality relations. The study is carried out for monthly recorded financial indices for ten countries in Europe, North America, Asia and Australia. The local Gaussian approach makes it possible to examine lead-lag relations locally and separately in the tails and in the center of the return distributions of the series. It is shown that this results in a new and much more detailed picture of these relationships. Typically, the dependence is much stronger in the tails than in the center of the return distributions. It is shown that the ensuing nonlinear Granger causality tests may detect causality where traditional linear tests fail.
格兰杰因果检验对于检测时间序列之间的领先-滞后关系至关重要。传统上,人们使用该检验的线性版本,本质上是基于线性时间序列回归,而线性时间序列回归本身又是基于序列的自相关和互相关。在本文中,我们采用局部高斯方法对领先-滞后和因果关系进行实证研究。该研究针对欧洲、北美、亚洲和澳大利亚十个国家每月记录的金融指数展开。局部高斯方法使得能够在序列回报分布的尾部和中心分别局部地检验领先-滞后关系。结果表明,这会产生关于这些关系的全新且更为详细的图景。通常,在回报分布的尾部,依赖性比在中心要强得多。结果表明,由此产生的非线性格兰杰因果检验可能会在传统线性检验失效的情况下检测到因果关系。