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arXiv 提交日期: 2026-04-07
📄 Abstract - Emergent social transmission of model-based representations without inference

How do people acquire rich, flexible knowledge about their environment from others despite limited cognitive capacity? Humans are often thought to rely on computationally costly mentalizing, such as inferring others' beliefs. In contrast, cultural evolution emphasizes that behavioral transmission can be supported by simple social cues. Using reinforcement learning simulations, we show how minimal social learning can indirectly transmit higher-level representations. We simulate a naïve agent searching for rewards in a reconfigurable environment, learning either alone or by observing an expert - crucially, without inferring mental states. Instead, the learner heuristically selects actions or boosts value representations based on observed actions. Our results demonstrate that these cues bias the learner's experience, causing its representation to converge toward the expert's. Model-based learners benefit most from social exposure, showing faster learning and more expert-like representations. These findings show how cultural transmission can arise from simple, non-mentalizing processes exploiting asocial learning mechanisms.

顶级标签: agents reinforcement learning theory
详细标签: social learning model-based rl cultural transmission representation learning heuristics 或 搜索:

无需推理的、基于模型表征的涌现式社会传递 / Emergent social transmission of model-based representations without inference


1️⃣ 一句话总结

这项研究表明,即使学习者不猜测他人的想法,仅通过观察专家行为并利用简单的社会线索(如模仿动作或增强价值判断),也能在互动中自发地学会专家对环境的高级认知模型,从而解释了文化传递可以源于非心智化的简单社会学习过程。

源自 arXiv: 2604.05777