NASA Logo

NTRS

NTRS - NASA Technical Reports Server

Back to Results
Model-free distributed learningModel-free learning for synchronous and asynchronous quasi-static networks is presented. The network weights are continuously perturbed, while the time-varying performance index is measured and correlated with the perturbation signals; the correlation output determines the changes in the weights. The perturbation may be either via noise sources or orthogonal signals. The invariance to detailed network structure mitigates large variability between supposedly identical networks as well as implementation defects. This local, regular, and completely distributed mechanism requires no central control and involves only a few global signals. Thus it allows for integrated on-chip learning in large analog and optical networks.
Document ID
19900047414
Acquisition Source
Legacy CDMS
Document Type
Reprint (Version printed in journal)
External Source(s)
Authors
Dembo, Amir
(Stanford Univ. CA, United States)
Kailath, Thomas
(Stanford University CA, United States)
Date Acquired
August 14, 2013
Publication Date
March 1, 1990
Publication Information
Publication: IEEE Transactions on Neural Networks
Volume: 1
ISSN: 1045-9227
Subject Category
Cybernetics
Report/Patent Number
AD-A226665
AFOSR-TR-90-1000
Accession Number
90A34469
Funding Number(s)
CONTRACT_GRANT: NAGW-419
CONTRACT_GRANT: DAAAL03-88-C-0011
CONTRACT_GRANT: N00014-86-K-0726
Distribution Limits
Public
Copyright
Other

Available Downloads

There are no available downloads for this record.
No Preview Available