Evolving Cognitive Models: A Novel Approach to Verbal Learning
Created by W.Langdon from
gp-bibliography.bib Revision:1.8344
- @InProceedings{Javed:2024:CogMI,
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author = "Noman Javed and Dmitry Bennett and
Laura K. Bartlett and Peter C. R. Lane and Fernand Gobet",
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title = "Evolving Cognitive Models: A Novel Approach to Verbal
Learning",
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booktitle = "2024 IEEE 6th International Conference on Cognitive
Machine Intelligence (CogMI)",
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year = "2024",
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pages = "226--233",
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month = oct,
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keywords = "genetic algorithms, genetic programming, Computational
modelling, Data models, Cognition, Cognitive science,
Machine intelligence, chunking, evolution, GEMS, LTM,
STM, CHREST",
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DOI = "
doi:10.1109/CogMI62246.2024.00037",
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abstract = "A common goal in cognitive science involves
explaining/predicting human performance in experimental
settings. This study proposes a single GEMS
computational scientific discovery framework that
automatically generates multiple models for verbal
learning simulations. GEMS achieves this by combining
simple and complex cognitive mechanisms with genetic
programming. This approach evolves populations of
interpretable cognitive agents, with each agent
learning by chunking and incorporating long-term memory
(LTM) and short-term memory (STM) stores, as well as
attention and perceptual mechanisms. The models
simulate two different verbal learning tasks: the first
investigates the effect of prior knowledge on the
learning rate of stimulus-response (S-R) pairs and the
second examines how backward recall is affected by the
similarity of the stimuli. The models produced by GEMS
are compared to both human data and EPAM - a different
verbal learning model that uses hand-crafted
task-specific strategies. The models automatically
evolved by GEMS produced good fit to the human data in
both studies, improving on EPAM's measures of fit by
almost a factor of three on some of the pattern recall
conditions. These findings offer further support to the
mechanisms proposed by chunking theory (Simon, 1974),
connect them to the evolutionary approach, and make
further inroads towards a Unified Theory of Cognition
(Newell, 1990).",
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notes = "Also known as \cite{10835591}",
- }
Genetic Programming entries for
Noman Javed
Dmitry Bennett
Laura Bartlett
Peter C R Lane
Fernand Gobet
Citations