PsychologyNature Communications
Linear reinforcement learning in planning, grid fields, and cognitive control
P. Piray and N. D. Daw
This innovative research by Payam Piray and Nathaniel D. Daw presents a model for decision-making in the brain that incorporates a temporally abstracted map of future events, enabling dynamic choices influenced by cognitive biases. Discover how this model integrates flexible replanning and cognitive control, providing a new perspective on the brain's response to long-distance contingencies.
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