具有信念共享的去中心化POMDP中的政策评估

Mert Kayaalp;Fatima Ghadieh;Ali H. Sayed
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引用次数: 0

摘要

大多数关于多智能体强化学习的工作都集中在环境状态完全可观察的场景上。在这项工作中,我们考虑了一个合作策略评估任务,其中假设代理不直接观察环境状态。相反,代理只能访问有噪声的观察结果和信任向量。众所周知,在多智能体环境下寻找全局后验分布通常是NP困难的。作为补救措施,我们提出了一种完全去中心化的信念形成策略,该策略依赖于个人更新和通信网络上的本地化交互。除了交换信念之外,代理还通过交换值函数参数估计来利用通信网络。我们分析表明,所提出的策略允许信息在网络上传播,这反过来又允许代理的参数与集中式基线具有有界差异。仿真中考虑了多传感器目标跟踪的应用。
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Policy Evaluation in Decentralized POMDPs With Belief Sharing
Most works on multi-agent reinforcement learning focus on scenarios where the state of the environment is fully observable. In this work, we consider a cooperative policy evaluation task in which agents are not assumed to observe the environment state directly. Instead, agents can only have access to noisy observations and to belief vectors. It is well-known that finding global posterior distributions under multi-agent settings is generally NP-hard. As a remedy, we propose a fully decentralized belief forming strategy that relies on individual updates and on localized interactions over a communication network. In addition to the exchange of the beliefs, agents exploit the communication network by exchanging value function parameter estimates as well. We analytically show that the proposed strategy allows information to diffuse over the network, which in turn allows the agents' parameters to have a bounded difference with a centralized baseline. A multi-sensor target tracking application is considered in the simulations.
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