A Consistent Nonparametric Test for Granger Non-Causality Based on the Transfer Entropy

Entropy (Basel). 2020 Oct 3;22(10):1123. doi: 10.3390/e22101123.

Abstract

To date, testing for Granger non-causality using kernel density-based nonparametric estimates of the transfer entropy has been hindered by the intractability of the asymptotic distribution of the estimators. We overcome this by shifting from the transfer entropy to its first-order Taylor expansion near the null hypothesis, which is also non-negative and zero if and only if Granger causality is absent. The estimated Taylor expansion can be expressed in terms of a U-statistic, demonstrating asymptotic normality. After studying its size and power properties numerically, the resulting test is illustrated empirically with applications to stock indices and exchange rates.

Keywords: Granger causality; U-statistic; financial time series; high frequency data; nonparametric test.