Nonlinear feedback modulation contributes to the optimization of flexible decision-making
Description
Neural activity in the primate brain correlates with both sensory evaluation and action selection aspects of decision-making. However, the intricate interaction between these distinct neural processes and their impact on decision behaviors remains unexplored. Here, we examined the interplay of these decision processes in posterior parietal cortex (PPC) when monkeys performed a flexible decision task. We found that the PPC activity related to monkeys' abstract decisions about visual stimuli was nonlinearly modulated by monkeys' following saccade choices directed outside each neuron's response field. Recurrent neural network modeling indicated that the feedback connections, matching the learned stimuli-response associations during the task, might mediate such feedback modulation. Further analysis on network dynamics revealed that selectivity-specific feedback connectivity intensified the attractor basins of population activity underlying saccade choices, thereby increasing the reliability of flexible decisions. These results highlight an iterative computation between different decision processes, mediated primarily by precise feedback connectivity, contributing to the optimization of flexible decision-making.
Data availability
The electrophysiology data is available on Dryad. The code for Training RNN and the relative analysis is available on GitHub (copy archived at Wu, 2025).
The following data sets were generated:
Wu X Zhou Y (2025) Dryad Digital Repository Recorded neural data from: Nonlinear feedback modulation contributes to the optimization of flexible decision-making. https://doi.org/10.5061/dryad.n8pk0p37z
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Additional details
Identifiers
- DOI
- 10.7554/elife.96402.3
- Other
- oai:uchicago.tind.io:16349
Funding
- Ministry of Science and Technology of the People's Republic of China
- STI2030-Major Projects (2021ZD0203800)
- National Natural Science Foundation of China
- NSFC32171036