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Regularized Estimation of High-Dimensional Vector AutoRegressions with Weakly Dependent Innovations

Published 19 Dec 2019 in math.ST, econ.EM, stat.ML, and stat.TH | (1912.09002v3)

Abstract: There has been considerable advance in understanding the properties of sparse regularization procedures in high-dimensional models. In time series context, it is mostly restricted to Gaussian autoregressions or mixing sequences. We study oracle properties of LASSO estimation of weakly sparse vector-autoregressive models with heavy tailed, weakly dependent innovations with virtually no assumption on the conditional heteroskedasticity. In contrast to current literature, our innovation process satisfy an $L1$ mixingale type condition on the centered conditional covariance matrices. This condition covers $L1$-NED sequences and strong ($\alpha$-) mixing sequences as particular examples.

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