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Sequence learning recodes cortical representations instead of strengthening initial ones

Published version
Peer-reviewed

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Authors

Norris, Dennis 

Abstract

We contrast two computational models of sequence learning. The associative learner posits that learning proceeds by strengthening existing association weights. Alternatively, recoding posits that learning creates new and more efficient representations of the learned sequences. Importantly, both models propose that humans act as optimal learners but capture different statistics of the stimuli in their internal model. Furthermore, these models make dissociable predictions as to how learning changes the neural representation of sequences. We tested these predictions by using fMRI to extract neural activity patterns from the dorsal visual processing stream during a sequence recall task. We observed that only the recoding account can explain the similarity of neural activity patterns, suggesting that participants recode the learned sequences using chunks. We show that associative learning can theoretically store only very limited number of overlapping sequences, such as common in ecological working memory tasks, and hence an efficient learner should recode initial sequence representations.

Description

Keywords

Research Article, Biology and life sciences, Social sciences, Medicine and health sciences, Research and analysis methods, Physical sciences

Journal Title

PLOS Computational Biology

Conference Name

Journal ISSN

1553-734X
1553-7358

Volume Title

17

Publisher

Public Library of Science
Sponsorship
Medical Research Council UK (SUAG/012/RG91365)
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