Litcius/Paper detail

Cognition Without Neural Representation: Dynamics of a Complex System

Inês Hipólito

2022Frontiers in Psychology15 citationsDOIOpen Access PDF

Abstract

This paper proposes an account of neurocognitive activity without leveraging the notion of neural representation. Neural representation is a concept that results from assuming that the properties of the models used in computational cognitive neuroscience (e.g., information, representation, etc.) must literally exist the system being modelled (e.g., the brain). Computational models are important tools to test a theory about how the collected data (e.g., behavioural or neuroimaging) has been generated. While the usefulness of computational models is unquestionable, it does not follow that neurocognitive activity should literally entail the properties construed in the model (e.g., information, representation). While this is an assumption present in computationalist accounts, it is not held across the board in neuroscience. In the last section, the paper offers a dynamical account of neurocognitive activity with Dynamical Causal Modelling (DCM) that combines dynamical systems theory (DST) mathematical formalisms with the theoretical contextualisation provided by Embodied and Enactive Cognitive Science (EECS).

Topics & Concepts

NeurocognitiveRotation formalisms in three dimensionsRepresentation (politics)Embodied cognitionCognitive scienceCognitive neuroscienceComputational neuroscienceCognitionComputational modelPsychologyDynamical systems theoryComputer scienceArtificial intelligenceCognitive psychologyNeuroscienceMathematicsGeometryQuantum mechanicsLawPolitical sciencePhysicsPoliticsEmbodied and Extended CognitionNeural dynamics and brain functionCognitive Science and Education Research