DocumentCode
3850901
Title
Least L/sub p/-norm estimation of autoregressive model coefficients of symmetric /spl alpha/-stable processes
Author
E.E. Kuruoglu;P.J.W. Rayner;W.J. Fitzgerald
Author_Institution
Dept. of Eng., Cambridge Univ., UK
Volume
4
Issue
7
fYear
1997
Firstpage
201
Lastpage
203
Abstract
Most of the existing coefficient estimation techniques in the literature for autoregressive (AR) symmetric /spl alpha/-stable (S/spl alpha/S) processes require large amounts of data for efficient estimation. However, in many practical cases, either only a short length of data is available or the data is nonstationary. Motivated by the norm of /spl alpha/-stable variables, the AR model coefficient estimation problem is formulated as an l/sub p/-norm minimization problem, and the interactively reweighted least squares (IRLS) is suggested for the solution. The simulation results indicate superior performance when compared to existing methods, especially when only short length data are available.
Keywords
"Gaussian noise","Acoustic noise","Least squares approximation","Signal processing","Gaussian distribution","Random variables","Atmospheric modeling","Dispersion","Equations"
Journal_Title
IEEE Signal Processing Letters
Publisher
ieee
ISSN
1070-9908
Type
jour
DOI
10.1109/97.596886
Filename
596886
Link To Document