TY - JOUR
T1 - Nonasymptotic bounds for autoregressive time series modeling
AU - Goldenshluger, Alexander
AU - Zeevi, Assaf
PY - 2001/4
Y1 - 2001/4
N2 - The subject of this paper is autoregressive (AR) modeling of a stationary, Gaussian discrete time process, based on a finite sequence of observations. The process is assumed to admit in AR(∞) representation with exponentially decaying coefficients. We adopt the nonparametric mini max framework and study how well the process can be approximated by a finite-order AR model. A lower bound on the accuracy of AR approximations is derived, and a nonasymptotic upper bound on the accuracy of the regularized least squares estimator is established. It is shown that with a "proper" choice of the model order, this estimator is minimax optimal in order. These considerations lead also to a nonasymptotic upper bound on the mean squared error of the associated one-step predictor. A numerical study compares the common model selection procedures to the minimax optimal order choice.
AB - The subject of this paper is autoregressive (AR) modeling of a stationary, Gaussian discrete time process, based on a finite sequence of observations. The process is assumed to admit in AR(∞) representation with exponentially decaying coefficients. We adopt the nonparametric mini max framework and study how well the process can be approximated by a finite-order AR model. A lower bound on the accuracy of AR approximations is derived, and a nonasymptotic upper bound on the accuracy of the regularized least squares estimator is established. It is shown that with a "proper" choice of the model order, this estimator is minimax optimal in order. These considerations lead also to a nonasymptotic upper bound on the mean squared error of the associated one-step predictor. A numerical study compares the common model selection procedures to the minimax optimal order choice.
KW - Autoregressive approximation
KW - Minimax risk
KW - Rates of convergence
UR - http://www.scopus.com/inward/record.url?scp=0035621206&partnerID=8YFLogxK
U2 - 10.1214/aos/1009210547
DO - 10.1214/aos/1009210547
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AN - SCOPUS:0035621206
SN - 0090-5364
VL - 29
SP - 417
EP - 444
JO - Annals of Statistics
JF - Annals of Statistics
IS - 2
ER -