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Emergent Tool Use From Multi-Agent Autocurricula
[article]
2020
arXiv
pre-print
Through multi-agent competition, the simple objective of hide-and-seek, and standard reinforcement learning algorithms at scale, we find that agents create a self-supervised autocurriculum inducing multiple distinct rounds of emergent strategy, many of which require sophisticated tool use and coordination. We find clear evidence of six emergent phases in agent strategy in our environment, each of which creates a new pressure for the opposing team to adapt; for instance, agents learn to build
arXiv:1909.07528v2
fatcat:u4efcciy7nbl3g5s4kwnillcci