English

Learning to solve complex tasks by growing knowledge culturally across generations

Computation and Language 2021-12-17 v3 Artificial Intelligence

Abstract

Knowledge built culturally across generations allows humans to learn far more than an individual could glean from their own experience in a lifetime. Cultural knowledge in turn rests on language: language is the richest record of what previous generations believed, valued, and practiced, and how these evolved over time. The power and mechanisms of language as a means of cultural learning, however, are not well understood, and as a result, current AI systems do not leverage language as a means for cultural knowledge transmission. Here, we take a first step towards reverse-engineering cultural learning through language. We developed a suite of complex tasks in the form of minimalist-style video games, which we deployed in an iterated learning paradigm. Human participants were limited to only two attempts (two lives) to beat each game and were allowed to write a message to a future participant who read the message before playing. Knowledge accumulated gradually across generations, allowing later generations to advance further in the games and perform more efficient actions. Multigenerational learning followed a strikingly similar trajectory to individuals learning alone with an unlimited number of lives. Successive generations of learners were able to succeed by expressing distinct types of knowledge in natural language: the dynamics of the environment, valuable goals, dangerous risks, and strategies for success. The video game paradigm we pioneer here is thus a rich test bed for developing AI systems capable of acquiring and transmitting cultural knowledge.

Keywords

Cite

@article{arxiv.2107.13377,
  title  = {Learning to solve complex tasks by growing knowledge culturally across generations},
  author = {Michael Henry Tessler and Jason Madeano and Pedro A. Tsividis and Brin Harper and Noah D. Goodman and Joshua B. Tenenbaum},
  journal= {arXiv preprint arXiv:2107.13377},
  year   = {2021}
}

Comments

Presented at the NeurIPS 2021 Cooperative AI Workshop (Dec 2021) and the 43rd Annual Meeting of the Cognitive Science Society (July 2021)

R2 v1 2026-06-24T04:35:49.277Z