Conference Paper (published)
Details
Citation
Graham B & Willshaw DJ (1997) An associative memory model with probabilistic synaptic transmission. In: Bower J (ed.) Computational Neuroscience: Trends in Research, 1997. Annual Computational Neuroscience Conference, Boston, MA, USA, 14.07.1996-17.07.1996. New York: Springer, pp. 315-319. http://link.springer.com/chapter/10.1007/978-1-4757-9800-5_51; https://doi.org/10.1007/978-1-4757-9800-5_51
Abstract
The associative net model of heteroassociative memory with binary-valued synapses has been extended to include recent experimental data that indicates that in the hippocampus one form of synaptic modification is a change in the probability of synaptic transmission [2]. Pattern pairs are stored in the net by a version of the Hebbian learning rule that changes the probability of transmission at synapses where the presynaptic and postsynaptic units are simultaneously active from a low, base value to a high, modified value. Numerical calculations of the expected recall response have been used to assess the performance for different values of the base and modified probabilities. If there is a cost incurred with generating the difference between these probabilities, then the optimal difference is around 0.4. Performance can be greatly enhanced by using multiple cue presentations during recall.
Status | Published |
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Publication date | 31/12/1997 |
Publication date online | 31/07/1996 |
Publisher | Springer |
Publisher URL | |
Place of publication | New York |
ISBN | 978-1-4757-9802-9 |
Conference | Annual Computational Neuroscience Conference |
Conference location | Boston, MA, USA |
Dates | – |
People (1)
Emeritus Professor, Computing Science