首页 /研究 /Concept Learning for Interpretable Multi-Agent Reinforcement Learning
LEARNING

Concept Learning for Interpretable Multi-Agent Reinforcement Learning

Renos Zabounidis, Joseph Campbell, Simon Stepputtis, Dana Hughes, Katia Sycara

发表年份
2023
引用次数
2
访问权限
开放获取

摘要

Multi-agent robotic systems are increasingly operating in real-world environments in close proximity to humans, yet are largely controlled by policy models with inscrutable deep neural network representations. We introduce a method for incorporating interpretable concepts from a domain expert into models trained through multi-agent reinforcement learning, by requiring the model to first predict such concepts then utilize them for decision making. This allows an expert to both reason about the resulting concept policy models in terms of these high-level concepts at run-time, as well as intervene and correct mispredictions to improve performance. We show that this yields improved interpretability and training stability, with benefits to policy performance and sample efficiency in a simulated and real-world cooperative-competitive multi-agent game.

关键词

InterpretabilityReinforcement learningArtificial intelligenceComputer scienceMachine learningDomain (mathematical analysis)Stability (learning theory)Artificial neural network

相关论文

查看 LEARNING 分类全部论文