August 2021 Bootstrap based inference for sparse high-dimensional time series models
Jonas Krampe, Jens-Peter Kreiss, Efstathios Paparoditis
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Bernoulli 27(3): 1441-1466 (August 2021). DOI: 10.3150/20-BEJ1239

Abstract

Fitting sparse models to high-dimensional time series is an important area of statistical inference. In this paper, we consider sparse vector autoregressive models and develop appropriate bootstrap methods to infer properties of such processes. Our bootstrap methodology generates pseudo time series using a model-based bootstrap procedure which involves an estimated, sparsified version of the underlying vector autoregressive model. Inference is performed using so-called de-sparsified or de-biased estimators of the autoregressive model parameters. We derive the asymptotic distribution of such estimators in the time series context and establish asymptotic validity of the bootstrap procedure proposed for estimation and, appropriately modified, for testing purposes. In particular, we focus on testing that large groups of autoregressive coefficients equal zero. Our theoretical results are complemented by simulations which investigate the finite sample performance of the bootstrap methodology proposed. A real-life data application is also presented.

Citation

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Jonas Krampe. Jens-Peter Kreiss. Efstathios Paparoditis. "Bootstrap based inference for sparse high-dimensional time series models." Bernoulli 27 (3) 1441 - 1466, August 2021. https://doi.org/10.3150/20-BEJ1239

Information

Received: 1 September 2019; Revised: 1 March 2020; Published: August 2021
First available in Project Euclid: 10 May 2021

Digital Object Identifier: 10.3150/20-BEJ1239

Keywords: De-sparsified estimators , testing , vector autoregressive models

Rights: Copyright © 2021 ISI/BS

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Vol.27 • No. 3 • August 2021
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