LASSO-Type Penalties for Covariate Selection and Forecasting in Time Series

LASSO-Type Penalties for Covariate Selection and Forecasting in Time Series

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Article ID: iaor20163298
Volume: 35
Issue: 7
Start Page Number: 592
End Page Number: 612
Publication Date: Nov 2016
Journal: Journal of Forecasting
Authors: ,
Keywords: statistics: regression, simulation, statistics: empirical
Abstract:

This paper studies some forms of LASSO‐type penalties in time series to reduce the dimensionality of the parameter space as well as to improve out‐of‐sample forecasting performance. In particular, we propose a method that we call WLadaLASSO (weighted lag adaptive LASSO), which assigns not only different weights to each coefficient but also further penalizes coefficients of higher‐lagged covariates. In our Monte Carlo implementation, the WLadaLASSO is superior in terms of covariate selection, parameter estimation precision and forecasting, when compared to both LASSO and adaLASSO, especially for a higher number of candidate lags and a stronger linear dependence between predictors. Empirical studies illustrate our approach for US risk premium and US inflation forecasting with good results.

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