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Covid-19: PHE upgrades PPE advice for all patient contacts with risk of infection

Anna Sayburn

2020BMJ30 citationsDOIOpen Access PDF

Abstract

<h3>Abstract</h3> The neuroscience of perception has recently been revolutionized with an integrative reverse-engineering approach in which computation, brain function, and behavior are linked across many different datasets and many computational models. We here present a first systematic study taking this approach into higher-level cognition: human language processing, our species’ signature cognitive skill. We find that the most powerful ‘transformer’ networks predict neural responses at nearly 100% and generalize across different datasets and data types (fMRI, ECoG). Across models, significant correlations are observed among all three metrics of performance: neural fit, fit to behavioral responses, and accuracy on the next-word prediction task (but not other language tasks), consistent with the long-standing hypothesis that the brain’s language system is optimized for predictive processing. Model architectures with initial weights further perform surprisingly similar to final trained models, suggesting that inherent structure – and not just experience with language – crucially contributes to a model’s match to the brain.

Topics & Concepts

Computer scienceCognitionNeural correlates of consciousnessCoronavirus disease 2019 (COVID-19)PerceptionArtificial intelligenceLanguage modelMachine learningCognitive psychologyTask (project management)Artificial neural networkNatural language processingPsychologyNeuroscienceMedicineInfectious disease (medical specialty)EconomicsManagementPathologyDiseaseHealth, Environment, Cognitive AgingFunctional Brain Connectivity StudiesIntensive Care Unit Cognitive Disorders
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