| Literature DB >> 32149602 |
Flora Bouchacourt1,2, Stefano Palminteri1,2,3, Etienne Koechlin1,2, Srdjan Ostojic1,2,3.
Abstract
Depending on environmental demands, humans can learn and exploit multiple concurrent sets of stimulus-response associations. Mechanisms underlying the learning of such task-sets remain unknown. Here we investigate the hypothesis that task-set learning relies on unsupervised chunking of stimulus-response associations that occur in temporal proximity. We examine behavioral and neural data from a task-set learning experiment using a network model. We first show that task-set learning can be achieved provided the timescale of chunking is slower than the timescale of stimulus-response learning. Fitting the model to behavioral data on a subject-by-subject basis confirmed this expectation and led to specific predictions linking chunking and task-set retrieval that were borne out by behavioral performance and reaction times. Comparing the model activity with BOLD signal allowed us to identify neural correlates of task-set retrieval in a functional network involving ventral and dorsal prefrontal cortex, with the dorsal system preferentially engaged when retrievals are used to improve performance.Entities:
Keywords: cognitive neuroscience; computational neuroscience; human; neural networks; neuroscience
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Year: 2020 PMID: 32149602 PMCID: PMC7108869 DOI: 10.7554/eLife.50469
Source DB: PubMed Journal: Elife ISSN: 2050-084X Impact factor: 8.140