Removing Time Variation with the Anti-Hebbian Differential Synapse
Abstract
I describe a local synaptic learning rule that can be used to remove the effects of certain types of systematic temporal variation in the inputs to a unit. According to this rule, changes in synaptic weight result from a conjunction of short-term temporal changes in the inputs and the output. Formally,This is like the differential rule proposed by Klopf (1986) and Kosko (1986), except for a change of sign, which gives it an anti-Hebbian character. By itself this rule is insufficient. A weight conservation condition is needed to prevent the weights from collapsing to zero, and some further constraint—implemented here by a biasing term—to select particular sets of weights from the subspace of those which give minimal variation. As an example, I show that this rule will generate center-surround receptive fields that remove temporally varying linear gradients from the inputs.
Cite
Text
Mitchison. "Removing Time Variation with the Anti-Hebbian Differential Synapse." Neural Computation, 1991. doi:10.1162/NECO.1991.3.3.312Markdown
[Mitchison. "Removing Time Variation with the Anti-Hebbian Differential Synapse." Neural Computation, 1991.](https://mlanthology.org/neco/1991/mitchison1991neco-removing/) doi:10.1162/NECO.1991.3.3.312BibTeX
@article{mitchison1991neco-removing,
title = {{Removing Time Variation with the Anti-Hebbian Differential Synapse}},
author = {Mitchison, Graeme},
journal = {Neural Computation},
year = {1991},
pages = {312-320},
doi = {10.1162/NECO.1991.3.3.312},
volume = {3},
url = {https://mlanthology.org/neco/1991/mitchison1991neco-removing/}
}