VARX-L: Structured Regularization for Large Vector Autoregressions with Exogenous Variables
William Nicholson, David Matteson, Jacob Bien

TL;DR
This paper introduces VARX-L, a structured regularization framework for large VARX models that enhances estimation efficiency and forecasting accuracy in high-dimensional macroeconomic data, addressing parameter proliferation issues.
Contribution
The paper proposes VARX-L, a novel regularization approach for high-dimensional VARX models, enabling scalable estimation and improved forecasting performance.
Findings
Effective in high-dimensional macroeconomic forecasting
Reduces parameter space significantly
Outperforms traditional methods in simulations and real data
Abstract
The vector autoregression (VAR) has long proven to be an effective method for modeling the joint dynamics of macroeconomic time series as well as forecasting. A major shortcoming of the VAR that has hindered its applicability is its heavy parameterization: the parameter space grows quadratically with the number of series included, quickly exhausting the available degrees of freedom. Consequently, forecasting using VARs is intractable for low-frequency, high-dimensional macroeconomic data. However, empirical evidence suggests that VARs that incorporate more component series tend to result in more accurate forecasts. Conventional methods that allow for the estimation of large VARs either tend to require ad hoc subjective specifications or are computationally infeasible. Moreover, as global economies become more intricately intertwined, there has been substantial interest in incorporating…
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