DocumentCode :
1038377
Title :
Stochastic correlative learning algorithms
Author :
Haykin, Simon ; Chen, Zhe ; Becker, Suzanna
Author_Institution :
Commun. Res. Lab., McMaster Univ., Hamilton, Ont., Canada
Volume :
52
Issue :
8
fYear :
2004
Firstpage :
2200
Lastpage :
2209
Abstract :
This paper addresses stochastic correlative learning as the basis for a broadly defined class of statistical learning algorithms known collectively as the algorithm of pattern extraction (ALOPEX) family. Starting with the neurobiologically motivated Hebb´s rule, the two conventional forms of the ALOPEX algorithm are derived, followed by a modified variant designed to improve the convergence speed. We next describe two more elaborate versions of the ALOPEX algorithm, which incorporate particle filtering that exemplifies a form of Monte Carlo simulation, to exchange computational complexity for an improved convergence and tracking behavior. In support of the different forms of the ALOPEX algorithm developed herein, we present three different experiments using synthetic and real-life data on binocular fusion of stereo images, on-line prediction, and system identification.
Keywords :
Monte Carlo methods; computational complexity; convergence; feature extraction; filtering theory; learning (artificial intelligence); pattern recognition; prediction theory; stereo image processing; stochastic processes; Monte Carlo estimation; binocular vision; computational complexity; convergence speed; financial data prediction; online prediction; particle filtering; pattern extraction; statistical learning algorithms; stereo images; stochastic correlative learning algorithms; system identification; Algorithm design and analysis; Computational complexity; Convergence; Filtering algorithms; Monte Carlo methods; Particle tracking; Psychology; Statistical learning; Stochastic processes; System identification; ALOPEX algorithm; binocular fusion; financial data prediction; particle filtering; sequential Monte Carlo estimation; stochastic correlative learning; system identification;
fLanguage :
English
Journal_Title :
Signal Processing, IEEE Transactions on
Publisher :
ieee
ISSN :
1053-587X
Type :
jour
DOI :
10.1109/TSP.2004.831067
Filename :
1315940
Link To Document :
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