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Robust Estimation of Transition Matrices in High Dimensional Heavy-tailed Vector Autoregressive Processes

机译:高维重尾向量自回归过程中转移矩阵的鲁棒估计

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摘要

Gaussian vector autoregressive (VAR) processes have been extensively studied in the literature. However, Gaussian assumptions are stringent for heavy-tailed time series that frequently arises in finance and economics. In this paper, we develop a unified framework for modeling and estimating heavy-tailed VAR processes. In particular, we generalize the Gaussian VAR model by an elliptical VAR model that naturally accommodates heavy-tailed time series. Under this model, we develop a quantile-based robust estimator for the transition matrix of the VAR process. We show that the proposed estimator achieves parametric rates of convergence in high dimensions. This is the first work in analyzing heavy-tailed high dimensional VAR processes. As an application of the proposed framework, we investigate Granger causality in the elliptical VAR process, and show that the robust transition matrix estimator induces sign-consistent estimators of Granger causality. The empirical performance of the proposed methodology is demonstrated by both synthetic and real data. We show that the proposed estimator is robust to heavy tails, and exhibit superior performance in stock price prediction.
机译:高斯矢量自回归(VAR)过程已在文献中进行了广泛的研究。但是,高斯假设对于金融和经济学中经常出现的重尾时间序列非常严格。在本文中,我们开发了一个用于建模和估计重尾VAR过程的统一框架。特别是,我们通过自然地适应重尾时间序列的椭圆VAR模型来推广高斯VAR模型。在此模型下,我们为VAR过程的转换矩阵开发了基于分位数的鲁棒估计器。我们表明,提出的估计器在高维中实现了参数收敛速度。这是分析重尾高维VAR过程的第一项工作。作为提出的框架的一个应用,我们研究了椭圆VAR过程中的Granger因果关系,并证明了稳健的过渡矩阵估计量可以诱导Granger因果关系的符号一致估计量。综合和真实数据都证明了所提出方法的经验性能。我们表明,提出的估计器对粗尾很鲁棒,并且在股票价格预测中表现出出色的性能。

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