Abrupt and spontaneous strategy switches emerge in simple regularised neural networks

dc.contributor.author Löwe, AT
dc.contributor.author Touzo, L
dc.contributor.author Muhle-Karbe, PS
dc.contributor.author Saxe, AM
dc.contributor.author Summerfield, C
dc.contributor.author Schuck, NW
dc.date.accessioned 2025-06-14T10:03:21Z
dc.date.available 2025-06-14T10:03:21Z
dc.date.issued 2024-10-21
dc.description.abstract <jats:p>Humans sometimes have an insight that leads to a sudden and drastic performance improvement on the task they are working on. Sudden strategy adaptations are often linked to insights, considered to be a unique aspect of human cognition tied to complex processes such as creativity or meta-cognitive reasoning. Here, we take a learning perspective and ask whether insight-like behaviour can occur in simple artificial neural networks, even when the models only learn to form input-output associations through gradual gradient descent. We compared learning dynamics in humans and regularised neural networks in a perceptual decision task that included a hidden regularity to solve the task more efficiently. Our results show that only some humans discover this regularity, and that behaviour is marked by a sudden and abrupt strategy switch that reflects an aha-moment. Notably, we find that simple neural networks with a gradual learning rule and a constant learning rate closely mimicked behavioural characteristics of human insight-like switches, exhibiting delay of insight, suddenness and selective occurrence in only some networks. Analyses of network architectures and learning dynamics revealed that insight-like behaviour crucially depended on a regularised gating mechanism and noise added to gradient updates, which allowed the networks to accumulate “silent knowledge” that is initially suppressed by regularised gating. This suggests that insight-like behaviour can arise from gradual learning in simple neural networks, where it reflects the combined influences of noise, gating and regularisation. These results have potential implications for more complex systems, such as the brain, and guide the way for future insight research.</jats:p>
dc.description.spage e1012505
dc.description.volume 20
dc.identifier.arxiv http://arxiv.org/abs/2302.11351
dc.identifier.doi 10.1371/journal.pcbi.1012505
dc.identifier.doi 10.48550/arxiv.2302.11351
dc.identifier.issn 1553-7358
dc.identifier.openaire doi_dedup___
dc.identifier.pmc PMC11527165
dc.identifier.pmid 39432516
dc.identifier.uri https://ror.circle-u.eu/handle/123456789/482067
dc.openaire.affiliation Université Paris Cité
dc.openaire.collaboration 1
dc.publisher Public Library of Science (PLoS)
dc.rights OPEN
dc.rights.license CC BY
dc.source PLOS Computational Biology
dc.subject Adult
dc.subject Male
dc.subject FOS: Computer and information sciences
dc.subject Computer Science - Artificial Intelligence
dc.subject Models, Neurological
dc.subject Decision Making
dc.subject Computational Biology
dc.subject Young Adult
dc.subject Cognition
dc.subject Artificial Intelligence (cs.AI)
dc.subject Quantitative Biology - Neurons and Cognition
dc.subject FOS: Biological sciences
dc.subject Humans
dc.subject Learning
dc.subject Female
dc.subject Neurons and Cognition (q-bio.NC)
dc.subject Neural Networks, Computer
dc.subject Research Article
dc.subject.fos 0301 basic medicine
dc.subject.fos 03 medical and health sciences
dc.title Abrupt and spontaneous strategy switches emerge in simple regularised neural networks
dc.type publication

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