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The actions of others act as a pseudo-reward to drive imitation in the context of social reinforcement learning

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Listed:
  • Anis Najar
  • Emmanuelle Bonnet
  • Bahador Bahrami
  • Stefano Palminteri

Abstract

While there is no doubt that social signals affect human reinforcement learning, there is still no consensus about how this process is computationally implemented. To address this issue, we compared three psychologically plausible hypotheses about the algorithmic implementation of imitation in reinforcement learning. The first hypothesis, decision biasing (DB), postulates that imitation consists in transiently biasing the learner’s action selection without affecting their value function. According to the second hypothesis, model-based imitation (MB), the learner infers the demonstrator’s value function through inverse reinforcement learning and uses it to bias action selection. Finally, according to the third hypothesis, value shaping (VS), the demonstrator’s actions directly affect the learner’s value function. We tested these three hypotheses in 2 experiments (N = 24 and N = 44) featuring a new variant of a social reinforcement learning task. We show through model comparison and model simulation that VS provides the best explanation of learner’s behavior. Results replicated in a third independent experiment featuring a larger cohort and a different design (N = 302). In our experiments, we also manipulated the quality of the demonstrators’ choices and found that learners were able to adapt their imitation rate, so that only skilled demonstrators were imitated. We proposed and tested an efficient meta-learning process to account for this effect, where imitation is regulated by the agreement between the learner and the demonstrator. In sum, our findings provide new insights and perspectives on the computational mechanisms underlying adaptive imitation in human reinforcement learning.This study investigates imitation from a computational perspective; three experiments show that, in the context of reinforcement learning, imitation operates via a durable modification of the learner's values, shedding new light on how imitation is computationally implemented and shapes learning and decision-making.

Suggested Citation

  • Anis Najar & Emmanuelle Bonnet & Bahador Bahrami & Stefano Palminteri, 2020. "The actions of others act as a pseudo-reward to drive imitation in the context of social reinforcement learning," PLOS Biology, Public Library of Science, vol. 18(12), pages 1-25, December.
  • Handle: RePEc:plo:pbio00:3001028
    DOI: 10.1371/journal.pbio.3001028
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