2024
DOI: 10.1101/2024.05.06.592696
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Laminar RNNs: using biologically-inspired network topology on the cortical laminar level in memory tasks

Ittai Shamir,
Yaniv Assaf

Abstract: Advancements in neuroscience and artificial intelligence have been fueling one another for decades. In this study, we integrate a neuroimaging model of laminar-level connectomics into a biologically-inspired deep learning model of recurrent neural networks (RNNs) for working memory tasks. The resulting model offers a way to incorporate a more comprehensive representation of brain topology into artificial intelligence without diminishing the performance of the network compared to previous models.

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