PsychologyNature
Discovering cognitive strategies with tiny recurrent neural networks
L. Ji-an, M. K. Benna, et al.
We introduce a novel modelling approach using recurrent neural networks to discover cognitive algorithms underlying biological decision-making. Small networks (1–4 units) often outperform classical models, match larger nets, and—interpretable via dynamical-systems analysis—reveal mechanisms and behavioural dimensionality. Research conducted by Li Ji-An, Marcus K. Benna, and Marcelo G. Mattar.
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