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ℓ1-regularization of high-dimensional time-series models with non-Gaussian and heteroskedastic errors

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2-s2.0-84952360813.pdf (1.058Mb)
Date
2016
Author
Medeiros, Marcelo C.
Mendes, Eduardo Fonseca
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Abstract
We study the asymptotic properties of the Adaptive LASSO (adaLASSO) in sparse, high-dimensional, linear time-series models. The adaLASSO is a one-step implementation of the family of folded concave penalized least-squares. We assume that both the number of covariates in the model and the number of candidate variables can increase with the sample size (polynomially or geometrically). In other words, we let the number of candidate variables to be larger than the number of observations. We show the adaLASSO consistently chooses the relevant variables as the number of observations increases (model selection consistency) and has the oracle property, even when the errors are non-Gaussian and conditionally heteroskedastic. This allows the adaLASSO to be applied to a myriad of applications in empirical finance and macroeconomics. A simulation study shows that the method performs well in very general settings with t-distributed and heteroskedastic errors as well with highly correlated regressors. Finally, we consider an application to forecast monthly US inflation with many predictors. The model estimated by the adaLASSO delivers superior forecasts than traditional benchmark competitors such as autoregressive and factor models.
URI
http://hdl.handle.net/10438/25462
Collections
  • Documentos indexados pela Scopus [664]
Knowledge Areas
Matemática
Subject
Análise de séries temporais
Modelagem de dados
Keyword
Economics
Gaussian Noise (Electronic)
Time series
Asymptotic properties
Highly-correlated
Linear time series model
Model selection consistencies
Penalized least-squares
Simulation studies
Time series models
Sparse models
Shrinkage
LASSO
AdaLASSO
GARCH
Propriedades assintóticas
Modelo linear de séries temporais

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