Regularized Estimation in High-Dimensional Vector Auto-Regressive Models Using Spatio-Temporal Information

估计 自回归模型 计算机科学 模式识别(心理学) 人工智能 高维 数学 计量经济学 管理 经济
作者
Zhenzhong Wang,Abolfazl Safikhani,Zhengyuan Zhu,David S. Matteson
出处
期刊:Statistica Sinica [Institute of Statistical Science]
被引量:2
标识
DOI:10.5705/ss.202020.0056
摘要

A Vector Auto-Regressive (VAR) model is commonly used to model multivariate time series, and there are many penalized methods to handle high dimensionality. However in terms of spatio-temporal data, most methods do not take the spatial and temporal structure of the data into consideration, which may lead to unreliable network detection and inaccurate forecasts. This paper proposes a data-driven weighted l1 regularized approach for spatio-temporal VAR model. Extensive simulation studies are carried out to compare the proposed method with four existing methods of high-dimensional VAR model, demonstrating improvements of our method over others in parameter estimation, network detection and out-of-sample forecasts. We also apply our method on a traffic data set to evaluate its performance in real application. In addition, we explore the theoretical properties of l1 regularized estimation of VAR model under the weakly sparse scenario, in which the exact sparsity can be viewed as a special case. To the best of our knowledge, this direction has not been considered yet in the literature. For general stationary VAR process, we derive the non-asymptotic upper bounds on l1 regularized estimation errors under the weakly sparse scenario, provide the conditions of estimation consistency, and further simplify these conditions for a special VAR(1) case.
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