2024
DOI: 10.1101/2024.05.22.595306
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Neuron-level Prediction and Noise can Implement Flexible Reward-Seeking Behavior

Chenguang Li,
Jonah Brenner,
Adam Boesky
et al.

Abstract: We show that neural networks can implement reward-seeking behavior using only local predictive updates and internal noise. These networks are capable of autonomous interaction with an environment and can switch between explore and exploit behavior, which we show is governed by attractor dynamics. Networks can adapt to changes in their architectures, environments, or motor interfaces without any external control signals. When networks have a choice between different tasks, they can form preferences that depend … Show more

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