2024
DOI: 10.1371/journal.pcbi.1012030
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Recurrent neural networks that learn multi-step visual routines with reinforcement learning

Sami Mollard,
Catherine Wacongne,
Sander M. Bohte
et al.

Abstract: Many cognitive problems can be decomposed into series of subproblems that are solved sequentially by the brain. When subproblems are solved, relevant intermediate results need to be stored by neurons and propagated to the next subproblem, until the overarching goal has been completed. We will here consider visual tasks, which can be decomposed into sequences of elemental visual operations. Experimental evidence suggests that intermediate results of the elemental operations are stored in working memory as an en… Show more

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