A Direct Estimation of High Dimensional Stationary Vector Autoregressions
Fang Han, Huanran Lu, and Han Liu

TL;DR
This paper introduces a novel linear programming approach for estimating high-dimensional stationary VAR models, leveraging temporal dependence to improve efficiency and theoretical understanding over traditional lasso-based methods.
Contribution
Proposes a linear programming estimation method for high-dimensional VAR models that is computationally efficient and provides explicit theoretical convergence rates.
Findings
Method outperforms lasso estimators in parameter estimation.
Method demonstrates superior forecasting accuracy.
Theoretical results highlight the importance of the operator norm of transition matrices.
Abstract
The vector autoregressive (VAR) model is a powerful tool in modeling complex time series and has been exploited in many fields. However, fitting high dimensional VAR model poses some unique challenges: On one hand, the dimensionality, caused by modeling a large number of time series and higher order autoregressive processes, is usually much higher than the time series length; On the other hand, the temporal dependence structure in the VAR model gives rise to extra theoretical challenges. In high dimensions, one popular approach is to assume the transition matrix is sparse and fit the VAR model using the "least squares" method with a lasso-type penalty. In this manuscript, we propose an alternative way in estimating the VAR model. The main idea is, via exploiting the temporal dependence structure, to formulate the estimating problem into a linear program. There is instant advantage for…
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Taxonomy
TopicsStatistical and numerical algorithms · Statistical Methods and Inference · Advanced Statistical Methods and Models
