Nonparametric Tests of Conditional Independence for Time Series

53 Pages Posted: 11 Oct 2021

See all articles by Xiaojun Song

Xiaojun Song

Peking University - Guanghua School of Management

Haoyu Wei

Peking University - Guanghua School of Management

Date Written: October 10, 2021

Abstract

We propose consistent nonparametric tests of conditional independence for time series data. Our methods are motivated from the difference between joint conditional cumulative distribution function (CDF) and the product of conditional CDFs. The difference is transformed into a proper conditional moment restriction (CMR), which forms the basis for our testing procedure. Our test statistics are then constructed using the integrated moment restrictions that are equivalent to the CMR. We establish the asymptotic behavior of the test statistics under the null, the alternative, and the sequence of local alternatives converging to conditional independence at the parametric rate. Our tests are implemented with the assistance of a multiplier bootstrap. Monte Carlo simulations are conducted to evaluate the finite sample performance of the proposed tests. We apply our tests to examine the predictability of equity risk premium using variance risk premium for different horizons and find that there exist various degrees of nonlinear predictability at mid-run and long-run horizons.

Keywords: Conditional CDFs; empirical processes; multiplier bootstrap; nonparametric regression; time series.

JEL Classification: C12; C14; C15

Suggested Citation

Song, Xiaojun and Wei, Haoyu, Nonparametric Tests of Conditional Independence for Time Series (October 10, 2021). Available at SSRN: https://ssrn.com/abstract=3939952 or http://dx.doi.org/10.2139/ssrn.3939952

Xiaojun Song

Peking University - Guanghua School of Management ( email )

Peking University
Beijing, Beijing 100871
China

Haoyu Wei (Contact Author)

Peking University - Guanghua School of Management ( email )

Peking University
Beijing, Beijing 100871
China

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