Abstract
We consider the estimation of and inference on precision matrices of a rich class of univariate locally stationary linear and nonlinear time series, assuming that only one realization of the time series is observed. Using a Cholesky decomposition technique, we show that the precision matrices can be directly estimated via a series of least squares linear regressions with smoothly time-varying coefficients. The method of sieves is utilized for the estimation and is shown to be optimally adaptive in terms of estimation accuracy and efficient in terms of computational complexity. We establish an asymptotic theory for a class of
Citation
Xiucai Ding. Zhou Zhou. "Estimation and inference for precision matrices of nonstationary time series." Ann. Statist. 48 (4) 2455 - 2477, August 2020. https://doi.org/10.1214/19-AOS1894
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