2022
DOI: 10.48550/arxiv.2210.06303
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Dynamic neuronal networks efficiently achieve classification in robotic interactions with real-world objects

Abstract: Biological cortical networks are potentially fully recurrent networks without any distinct output layer, where recognition may instead rely on the distribution of activity across its neurons. Because such biological networks can have rich dynamics, they are well-designed to cope with dynamical interactions of the types that occur in nature, while traditional machine learning networks may struggle to make sense of such data. Here we connected a simple model neuronal network (based on the 'linear summation neuro… Show more

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