A Hebbian Approach to Non-Spatial Prelinguistic Reasoning

Fernando Aguilar-Canto, Hiram Calvo

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Resumen

This research integrates key concepts of Computational Neuroscience, including the Bienestock-CooperMunro (BCM) rule, Spike Timing-Dependent Plasticity Rules (STDP), and the Temporal Difference Learning algorithm, with an important structure of Deep Learning (Convolutional Networks) to create an architecture with the potential of replicating observations of some cognitive experiments (particularly, those that provided some basis for sequential reasoning) while sharing the advantages already achieved by the previous proposals. In particular, we present Ring Model B, which is capable of associating visual with auditory stimulus, performing sequential predictions, and predicting reward from experience. Despite its simplicity, we considered such abilities to be a first step towards the formulation of more general models of prelinguistic reasoning.

Idioma originalInglés
Número de artículo281
PublicaciónBrain Sciences
Volumen12
N.º2
DOI
EstadoPublicada - feb. 2022

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