Artificial Generational Intelligence: Cultural Accumulation in Reinforcement Learning
Jonathan Cook, Chris Lu, Edward Hughes, Joel Z. Leibo, Jakob Foerster

TL;DR
This paper introduces reinforcement learning models that enable artificial agents to accumulate culture through generational processes, mimicking human cultural evolution and surpassing single-lifetime learning performance.
Contribution
It presents the first general models demonstrating emergent cultural accumulation in reinforcement learning, combining social learning with independent exploration.
Findings
Agents with cultural accumulation outperform single-lifetime trained agents.
In-context and in-weights models simulate knowledge and skill accumulation.
Models open new avenues for open-ended learning and human culture modeling.
Abstract
Cultural accumulation drives the open-ended and diverse progress in capabilities spanning human history. It builds an expanding body of knowledge and skills by combining individual exploration with inter-generational information transmission. Despite its widespread success among humans, the capacity for artificial learning agents to accumulate culture remains under-explored. In particular, approaches to reinforcement learning typically strive for improvements over only a single lifetime. Generational algorithms that do exist fail to capture the open-ended, emergent nature of cultural accumulation, which allows individuals to trade-off innovation and imitation. Building on the previously demonstrated ability for reinforcement learning agents to perform social learning, we find that training setups which balance this with independent learning give rise to cultural accumulation. These…
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Code & Models
Videos
Taxonomy
TopicsLanguage and cultural evolution
