DocumentCode :
445885
Title :
SCRAM: statistically converging recurrent associative memory
Author :
Chartier, Sylvain ; Hélie, Sébastien ; Boukadoum, Mounir ; Proulx, Robert
Author_Institution :
Dept. of Psychol., UQO, Gatineau, Que., Canada
Volume :
2
fYear :
2005
fDate :
31 July-4 Aug. 2005
Firstpage :
723
Abstract :
Autoassociative memories are known for their capacity to learn correlated patterns, complete these patterns and, once the learning phase completed, filter noisy inputs. However, no autoassociative memory as of yet was able to learn noisy patterns without preprocessing or special procedure. In this paper, we show that a new unsupervised learning rule enables associative memory models to locally learn online noisy correlated patterns. The learning is carried out by a dual Hebbian rule and the convergence is asymptotic. The asymptotic convergence results in an unequal eigenvalues spectrum, which distinguish SCRAM from optimal linear associative memories (OLAMs). Therefore, SCRAM develops less spurious attractors and has better recall performance under noise degradation.
Keywords :
Hebbian learning; content-addressable storage; recurrent neural nets; unsupervised learning; autoassociative memories; dual Hebbian rule; noisy correlated patterns; optimal linear associative memories; statistically converging recurrent associative memory; unsupervised learning rule; Associative memory; Computer science; Convergence; Degradation; Eigenvalues and eigenfunctions; Filters; Phase noise; Psychology; Unsupervised learning; Working environment noise;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Neural Networks, 2005. IJCNN '05. Proceedings. 2005 IEEE International Joint Conference on
Print_ISBN :
0-7803-9048-2
Type :
conf
DOI :
10.1109/IJCNN.2005.1555941
Filename :
1555941
Link To Document :
بازگشت