Learning to Coordinate via Quantum Entanglement in Multi-Agent Reinforcement Learning
AI 摘要
提出一种利用量子纠缠增强多智能体强化学习协调能力的新框架。
主要贡献
- 提出基于量子纠缠的多智能体强化学习框架
- 设计可微的量子测量策略参数化方法
- 提出分解联合策略的量子协调器架构
方法论
设计新型策略参数化和架构,通过黑盒游戏和Dec-POMDP验证量子优势。
原文摘要
The inability to communicate poses a major challenge to coordination in multi-agent reinforcement learning (MARL). Prior work has explored correlating local policies via shared randomness, sometimes in the form of a correlation device, as a mechanism to assist in decentralized decision-making. In contrast, this work introduces the first framework for training MARL agents to exploit shared quantum entanglement as a coordination resource, which permits a larger class of communication-free correlated policies than shared randomness alone. This is motivated by well-known results in quantum physics which posit that, for certain single-round cooperative games with no communication, shared quantum entanglement enables strategies that outperform those that only use shared randomness. In such cases, we say that there is quantum advantage. Our framework is based on a novel differentiable policy parameterization that enables optimization over quantum measurements, together with a novel policy architecture that decomposes joint policies into a quantum coordinator and decentralized local actors. To illustrate the effectiveness of our proposed method, we first show that we can learn, purely from experience, strategies that attain quantum advantage in single-round games that are treated as black box oracles. We then demonstrate how our machinery can learn policies with quantum advantage in an illustrative multi-agent sequential decision-making problem formulated as a decentralized partially observable Markov decision process (Dec-POMDP).