Abstract: | ABSTRACT In this article, we consider the problem of testing the Granger causality in stationary time series models with non-normal heavy-tailed distributions. We consider a normal mixture model to cover the heavy-tailed distribution, and propose a test statistic based on the partially adaptive estimator proposed by Phillips [1] Phillips, R.F. 1994. Partially Adaptive Estimation via a Normal Mixture. J. Econometics, 64: 123–144. [Crossref], [Web of Science ®] , [Google Scholar]. It is shown that the test statistic asymptotically follows a chi-squared distribution. Simulation results indicate that our test outperforms the conventional test based on the least squares estimator when the observations follow a heavy-tailed distribution. |