2022
DOI: 10.48550/arxiv.2204.12371
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Social learning spontaneously emerges by searching optimal heuristics with deep reinforcement learning

Abstract: How have individuals of social animals in nature evolved to learn from each other, and what would be the optimal strategy for such learning in a specific environment? Here, we address both problems by employing a deep reinforcement learning model to optimize the social learning strategies (SLSs) of agents in a cooperative game in a multi-dimensional landscape. Throughout the training for maximizing the overall payoff, we find that the agent spontaneously learns various concepts of social learning, such as copy… Show more

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References 48 publications
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