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Nonparametric tests for conditional independence using conditional distributions

Authors :
Abderrahim Taamouti
Taoufik Bouezmarni
Source :
Journal of nonparametric statistics, 2014, Vol.26(4), pp.697-719 [Peer Reviewed Journal]
Publication Year :
2014
Publisher :
Taylor & Francis, 2014.

Abstract

The concept of causality is naturally defined in terms of conditional distribution, however almost all the empirical works focus on causality in mean. This paper aim to propose a nonparametric statistic to test the conditional independence and Granger non-causality between two variables conditionally on another one. The test statistic is based on the comparison of conditional distribution functions using an L2 metric. We use Nadaraya-Watson method to estimate the conditional distribution functions. We establish the asymptotic size and power properties of the test statistic and we motivate the validity of the local bootstrap. Further, we ran a simulation experiment to investigate the finite sample properties of the test and we illustrate its practical relevance by examining the Granger non-causality between S&P 500 Index returns and VIX volatility index. Contrary to the conventional t-test, which is based on a linear mean-regression model, we find that VIX index predicts excess returns both at short and long horizons.

Details

Database :
OpenAIRE
Journal :
Journal of nonparametric statistics, 2014, Vol.26(4), pp.697-719 [Peer Reviewed Journal]
Accession number :
edsair.doi.dedup.....b3bf37d94fb08f541bef954b3a8b0408
Full Text :
https://doi.org/10.1080/10485252.2014.945447