Meta-trained agents implement Bayes-optimal agents

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Authors Vladimir Mikulik, GrΓ©goire DelΓ©tang, Tom McGrath, Tim Genewein, Miljan Martic, Shane Legg, Pedro A. Ortega arXiv ID 2010.11223 Category cs.AI: Artificial Intelligence Cross-listed cs.LG, cs.NE Citations 46 Venue Neural Information Processing Systems Last Checked 3 months ago
Abstract
Memory-based meta-learning is a powerful technique to build agents that adapt fast to any task within a target distribution. A previous theoretical study has argued that this remarkable performance is because the meta-training protocol incentivises agents to behave Bayes-optimally. We empirically investigate this claim on a number of prediction and bandit tasks. Inspired by ideas from theoretical computer science, we show that meta-learned and Bayes-optimal agents not only behave alike, but they even share a similar computational structure, in the sense that one agent system can approximately simulate the other. Furthermore, we show that Bayes-optimal agents are fixed points of the meta-learning dynamics. Our results suggest that memory-based meta-learning might serve as a general technique for numerically approximating Bayes-optimal agents - that is, even for task distributions for which we currently don't possess tractable models.
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