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Hebbian Learning And Temporary Storage In The Convergence-Zone Model Of Episodic Memory (2000)
Michael Howe
and
Risto Miikkulainen
The Convergence-Zone model shows how sparse, random memory patterns can lead to one-shot storage and high capacity in the hippocampal component of the episodic memory system. This paper presents a biologically more realistic version of the model, with continuously-weighted connections and storage through Hebbian learning and normalization. In contrast to the gradual weight adaptation in many neural network models, episodic memory turns out to require high learning rates. Normalization allows earlier patterns to be overwritten, introducing time-dependent forgetting similar to the hippocampus.
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Citation:
Neurocomputing
, 32--33:817--821, 2000. Also J. M. Bower (editor), Computational Neuroscience: Trends in Research, 2000 (CNS*99, Pittsburgh, PA). New York: Plenum Press..
Bibtex:
@article{howe:neurocomputing00, title={Hebbian Learning And Temporary Storage In The Convergence-Zone Model Of Episodic Memory}, author={Michael Howe and Risto Miikkulainen}, volume={32--33}, journal={Neurocomputing}, pages={817--821}, note={Also J. M. Bower (editor), Computational Neuroscience: Trends in Research, 2000 (CNS*99, Pittsburgh, PA). New York: Plenum Press.}, url="http://nn.cs.utexas.edu/?howe:neurocomputing00", year={2000} }
People
Michael Howe
Undergraduate Student (Alumni)
michael_howe@cs.colorado.edu
Risto Miikkulainen
Professor
risto@cs.utexas.edu
Areas of Interest
Cognitive Science
Memory
Computational Neuroscience