DocumentCode
1153691
Title
The Quality of Lagged Products and Autoregressive Yule–Walker Models as Autocorrelation Estimates
Author
Broersen, Piet M T
Author_Institution
Dept. of Multi-Scale Phys., Delft Univ. of Technol., Delft, Netherlands
Volume
58
Issue
11
fYear
2009
Firstpage
3867
Lastpage
3873
Abstract
The sample autocorrelation function is defined by the mean lagged products (LPs) of random observations. It is the inverse Fourier transform of the raw periodogram. Both contain the same information, and the quality of the full-length sample autocorrelation to represent random data is as poor as that of a raw periodogram. The autoregressive (AR) Yule-Walker method uses LP autocorrelation estimates to compute AR parameters as a parametric model for the autocorrelation. The order of the AR model can be taken as the full LP length, or it can be determined with an order selection criterion. However, the autocorrelation function can more accurately be estimated with a general parametric time-series method. This parametric estimate of the autocorrelation function always has better accuracy than the LP estimates. The LP autocorrelation function is as long as the observation window, but parametric estimates will eventually die out. They allow an objective answer to the question of how long the autocorrelation function really is.
Keywords
Fourier transforms; autoregressive processes; parameter estimation; signal sampling; time series; AR parameter; LP autocorrelation estimates; autoregressive Yule-Walker model; inverse Fourier transform; mean lagged products; parametric estimate; parametric time-series method; random observation; sample autocorrelation function; Autoregressive (AR) process; correlation; identification; order selection; spectral estimation; time-series model;
fLanguage
English
Journal_Title
Instrumentation and Measurement, IEEE Transactions on
Publisher
ieee
ISSN
0018-9456
Type
jour
DOI
10.1109/TIM.2009.2021206
Filename
5175495
Link To Document