Robert Adamek, Aarhus BSS

"Sparse High-Dimensional Vector Autoregressive Bootstrap"

Abstract

We introduce a high-dimensional multiplier bootstrap for time series data based capturing dependence through a sparsely estimated vector autoregressive model. We prove its consistency for inference on high-dimensional means under two different moment assumptions on the errors, namely sub-gaussian moments and a finite number of absolute moments. In establishing these results, we derive a Gaussian approximation for the maximum mean of a linear process, which may be of independent interest.

Contact person: Jesper Riis-Vestergaard