Localist models are compatible with information measures, sparseness indices and complementary learning systems in the brain

Page, Michael (2017) Localist models are compatible with information measures, sparseness indices and complementary learning systems in the brain. Language, Cognition and Neuroscience, 32 (3). pp. 366-379. ISSN 2327-3798
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In this paper, I express continued support for localist modelling in psychology and critically evaluate previous studies that have sought to weaken the localist case in favour of models with thoroughgoing distributed representation. I question claims that information measures and sparseness indices derived from single-cell recording data are supportive of distributed representation and show that the patterns observed in those data can be reproduced from simulations of a model that is known to be localist. I also set out some logical objections to the complementary learning hypothesis, particularly in as much as it is used to justify thoroughgoing-distributed models of the cortex.


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