Title :
Order selection for AR models by predictive least squares
Author_Institution :
RAFAEL, Haifa, Israel
fDate :
4/1/1988 12:00:00 AM
Abstract :
A criterion is presented for selecting the order of autoregressive models that, unlike the existing criteria, is amenable to online or adaptive operation. It is based on the predictive least squares (PLS) principle and is implemented in a computationally efficient way by predictive lattice filters. The consistency of the criterion is proved, and its performance is demonstrated by computer simulations. Assuming the data to be generated by an AR model of order p, the order selection criterion should select the correct order p with probability that converges to 1 as the sample size grows to infinity. It is proved that the PLS criterion is indeed consistent, thereby giving a solid justification for the criterion. Simulation results that demonstrate the performance of the PLS criterion in comparison to H. Akaike´s AIC (1973) and the MDL criteria of J. Rissanen (1978) and G. Schwarz (1978) are given
Keywords :
filtering and prediction theory; AR model; autoregressive models; computer simulations; order selection; predictive lattice filters; predictive least squares; probability; Adaptive control; Adaptive equalizers; Application software; Computer simulation; Filters; Helium; Lattices; Least squares methods; Predictive models; Speech synthesis;
Journal_Title :
Acoustics, Speech and Signal Processing, IEEE Transactions on