Testing Conditional Independence via Quantile Regression Based Partial Copulas
The partial copula provides a method for describing the dependence between two random variables X and Y conditional on a third random vector Z in terms of nonparametric residuals U_1 and U_2. This paper develops a nonparametric test for conditional independence by combining the partial copula with a quantile regression based method for estimating the nonparametric residuals. We consider a test statistic based on generalized correlation between U_1 and U_2 and derive its large sample properties under consistency assumptions on the quantile regression procedure. We demonstrate through a simulation study that the resulting test is sound under complicated data generating distributions. Moreover, it is competitive with other state-of-the-art conditional independence tests in terms of power, and it has superior level properties compared to conditional independence tests based on conventional residuals obtained through conditional mean regression.
READ FULL TEXT