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O'Reilly,
R. C., & Norman, K. A. (2002). Hippocampal and neocortical contributions
to memory: Advances in the complementary learning systems framework. Trends
in Cognitive Sciences, 12(6), 505-510.
Click here
to download the PDF.
The complementary learning systems framework provides
a simple set of
principles, derived from converging biological, psychological and computational
constraints, for understanding the differential contributions of the neocortex
and hippocampus to learning and memory. The central principles are that
the neocortex has a low learning rate and uses overlapping distributed
representations to extract the general statistical structure of the environment,
whereas the hippocampus learns rapidly using separated representations
to
encode the details of specific events while minimizing interference. In
recent
years,we have instantiated these principles in working computational models,
and have used these models to address human and animal learning and memory
findings, across a wide range of domains and paradigms. Here, we review
a few representative applications of our models, focusing on two domains:
recognition memory and animal learning in the fear-conditioning paradigm.
In both domains, the models have generated novel predictions that have
been tested and confirmed.
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