On the Impact of Predictor Serial Correlation on the LASSO
We explore inference within sparse linear models, focusing on scenarios where both predictors and errors carry serial correlations. We establish a clear link between predictor serial correlation and the finite sample performance of the LASSO, showing that even orthogonal or weakly correlated station...
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Zusammenfassung: | We explore inference within sparse linear models, focusing on scenarios where
both predictors and errors carry serial correlations. We establish a clear link
between predictor serial correlation and the finite sample performance of the
LASSO, showing that even orthogonal or weakly correlated stationary AR
processes can lead to significant spurious correlations due to their serial
correlations. To address this challenge, we propose a novel approach named
ARMAr-LASSO (ARMA residuals LASSO), which applies the LASSO to predictor time
series that have been pre-whitened with ARMA filters and lags of dependent
variable. Utilizing the near-epoch dependence framework, we derive both
asymptotic results and oracle inequalities for the ARMAr-LASSO, and demonstrate
that it effectively reduces estimation errors while also providing an effective
forecasting and feature selection strategy. Our findings are supported by
extensive simulations and an application to real-world macroeconomic data,
which highlight the superior performance of the ARMAr-LASSO for handling sparse
linear models in the context of time series. |
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DOI: | 10.48550/arxiv.2408.09288 |