A Biologically Supported Error-Correcting Learning Rule
- 1 June 1991
- journal article
- Published by MIT Press in Neural Computation
- Vol. 3 (2) , 201-212
- https://doi.org/10.1162/neco.1991.3.2.201
Abstract
We show that a form of synaptic plasticity recently discovered in slices of the rat visual cortex (Artola et al. 1990) can support an error-correcting learning rule. The rule increases weights when both pre- and postsynaptic units are highly active, and decreases them when pre-synaptic activity is high and postsynaptic activation is less than the threshold for weight increment but greater than a lower threshold. We show that this rule corrects false positive outputs in feedforward associative memory, that in an appropriate opponent-unit architecture it corrects misses, and that it performs better than the optimal Hebbian learning rule reported by Willshaw and Dayan (1990).Keywords
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