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高维格兰杰因果检验及其在VIX与新闻中的应用

High-Dimensional Granger Causality Tests with an Application to VIX and News

Journal of Financial Econometrics · 2022
被引 22
人大 BABS 3

中文导读

研究了高维时间序列中基于正则化回归的格兰杰因果检验方法,利用稀疏组LASSO估计量处理异方差和自相关,并应用于VIX与金融新闻的因果分析。

Abstract

Abstract We study Granger causality testing for high-dimensional time series using regularized regressions. To perform proper inference, we rely on heteroskedasticity and autocorrelation consistent (HAC) estimation of the asymptotic variance and develop the inferential theory in the high-dimensional setting. To recognize the time-series data structures, we focus on the sparse-group LASSO (sg-LASSO) estimator, which includes the LASSO and the group LASSO as special cases. We establish the debiased central limit theorem for low-dimensional groups of regression coefficients and study the HAC estimator of the long-run variance based on the sg-LASSO residuals. This leads to valid time-series inference for individual regression coefficients as well as groups, including Granger causality tests. The treatment relies on a new Fuk–Nagaev inequality for a class of τ-mixing processes with heavier than Gaussian tails, which is of independent interest. In an empirical application, we study the Granger causal relationship between the VIX and financial news.

时间序列分析高维统计格兰杰因果检验金融计量经济学