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Bootstrap based inference for sparse high-dimensional time series models

机译:基于引导基于稀疏高维时间序列模型的推断

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摘要

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.
机译:将稀疏模型拟合到高维时间序列是统计推断的一个重要领域。在本文中,我们考虑稀疏向量自回归模型,并开发适当的引导方法来推断这些过程的性质。我们的bootstrap方法使用基于模型的bootstrap过程生成伪时间序列,该过程涉及基础向量自回归模型的估计、稀疏版本。使用所谓的自回归模型参数的去稀疏或去偏估计量进行推断。我们推导了时间序列背景下此类估计器的渐近分布,并建立了用于估计和适当修改的bootstrap方法的渐近有效性,以用于测试目的。特别是,我们着重于测试大组的自回归系数是否等于零。我们的理论结果得到了仿真的补充,仿真研究了所提出的bootstrap方法的有限样本性能。还介绍了一个实际的数据应用程序。

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