均值非线性格兰杰因果关系的度量

Measuring Nonlinear Granger Causality in Mean

Journal of Business & Economic Statistics · 2016
被引 22
人大 AABS 4

中文导读

提出一种基于非参数回归的模型无关方法,用于检测和量化随机变量之间的均值非线性格兰杰因果关系,并通过蒙特卡洛模拟和实证分析验证其有效性。

Abstract

We propose model-free measures for Granger causality in mean between random variables. Unlike the existing measures, ours are able to detect and quantify nonlinear causal effects. The new measures are based on nonparametric regressions and defined as logarithmic functions of restricted and unrestricted mean square forecast errors. They are easily and consistently estimated by replacing the unknown mean square forecast errors by their nonparametric kernel estimates. We derive the asymptotic normality of nonparametric estimator of causality measures, which we use to build tests for their statistical significance. We establish the validity of smoothed local bootstrap that one can use in finite sample settings to perform statistical tests. Monte Carlo simulations reveal that the proposed test has good finite sample size and power properties for a variety of data-generating processes and different sample sizes. Finally, the empirical importance of measuring nonlinear causality in mean is also illustrated. We quantify the degree of nonlinear predictability of equity risk premium using variance risk premium. Our empirical results show that the variance risk premium is a very good predictor of risk premium at horizons less than 6 months. We also find that there is a high degree of predictability at the 1-month horizon, that can be attributed to a nonlinear causal effect. Supplementary materials for this article are available online.

非线性Granger因果均值因果非参数估计方差风险溢价