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An approximation of the error back-propagation algorithm in a predictive coding network with local Hebbian synaptic plasticity

Abstract:
To efficiently learn from feedback, cortical networks need to update synaptic weights on multiple levels of cortical hierarchy. An effective and well-known algorithm for computing such changes in synaptic weights is the error back-propagation algorithm. However, in the back-propagation algorithm, the change in synaptic weights is a complex function of weights and activities of neurons not directly connected with the synapse being modified, whereas the changes in biological synapses are determined only by the activity of pre-synaptic and post-synaptic neurons. Several models have been proposed that approximate the back-propagation algorithm with local synaptic plasticity, but these models require complex external control over the network or relatively complex plasticity rules. Here we show that a network developed in the predictive coding framework can efficiently perform supervised learning fully autonomously, employing only simple local Hebbian plasticity. Furthermore, for certain parameters, the weight change in the predictive coding model converges to that of the back-propagation algorithm. This suggests that it is possible for cortical networks with simple Hebbian synaptic plasticity to implement efficient learning algorithms in which synapses in areas on multiple levels of hierarchy are modified to minimize the error on the output.
Publication status:
Published
Peer review status:
Peer reviewed

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Publisher copy:
10.1162/NECO_a_00949

Authors


More by this author
Institution:
University of Oxford
Division:
MSD
Department:
Clinical Neurosciences
Role:
Author
More by this author
Institution:
University of Oxford
Oxford college:
All Souls College
Role:
Author


Publisher:
Massachusetts Institute of Technology Press
Journal:
Neural Computation More from this journal
Volume:
29
Issue:
5
Pages:
1229-1262
Publication date:
2017-01-01
Acceptance date:
2017-01-05
DOI:
EISSN:
1530-888X
ISSN:
0899-7667


Pubs id:
pubs:668850
UUID:
uuid:e555da94-22c2-49e5-abdd-fb60f871c03c
Local pid:
pubs:668850
Source identifiers:
668850
Deposit date:
2017-01-10

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