Multi-agent reinforcement learning as a rehearsal for decentralized planning

IF 5.5 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Neurocomputing Pub Date : 2016-05-19 DOI:10.1016/j.neucom.2016.01.031
Landon Kraemer, Bikramjit Banerjee
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引用次数: 271

Abstract

Decentralized partially observable Markov decision processes (Dec-POMDPs) are a powerful tool for modeling multi-agent planning and decision-making under uncertainty. Prevalent Dec-POMDP solution techniques require centralized computation given full knowledge of the underlying model. Multi-agent reinforcement learning (MARL) based approaches have been recently proposed for distributed solution of Dec-POMDPs without full prior knowledge of the model, but these methods assume that conditions during learning and policy execution are identical. In some practical scenarios this may not be the case. We propose a novel MARL approach in which agents are allowed to rehearse with information that will not be available during policy execution. The key is for the agents to learn policies that do not explicitly rely on these rehearsal features. We also establish a weak convergence result for our algorithm, RLaR, demonstrating that RLaR converges in probability when certain conditions are met. We show experimentally that incorporating rehearsal features can enhance the learning rate compared to non-rehearsal-based learners, and demonstrate fast, (near) optimal performance on many existing benchmark Dec-POMDP problems. We also compare RLaR against an existing approximate Dec-POMDP solver which, like RLaR, does not assume a priori knowledge of the model. While RLaR׳s policy representation is not as scalable, we show that RLaR produces higher quality policies for most problems and horizons studied.

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多智能体强化学习作为分散规划的预演
分散式部分可观察马尔可夫决策过程(deco - pomdp)是研究不确定条件下多智能体规划和决策建模的有力工具。流行的Dec-POMDP解决方案技术需要在充分了解底层模型的情况下进行集中计算。最近提出了基于多智能体强化学习(MARL)的方法来解决deco - pomdp的分布式解决方案,而不需要对模型有完全的先验知识,但这些方法假设学习和策略执行过程中的条件相同。在一些实际场景中,情况可能并非如此。我们提出了一种新颖的MARL方法,允许代理使用在策略执行期间不可用的信息进行演练。关键是智能体学习不明确依赖于这些预演特征的策略。我们还建立了我们的算法RLaR的弱收敛结果,证明了RLaR在满足一定条件时是概率收敛的。我们通过实验证明,与非基于排练的学习器相比,结合排练特征可以提高学习率,并在许多现有的基准Dec-POMDP问题上展示了快速(接近)最优的性能。我们还将RLaR与现有的近似Dec-POMDP求解器进行了比较,后者与RLaR一样,不假设模型的先验知识。虽然RLaR的政策表示不具有可扩展性,但我们表明RLaR为研究的大多数问题和视野产生了更高质量的政策。
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来源期刊
Neurocomputing
Neurocomputing 工程技术-计算机:人工智能
CiteScore
13.10
自引率
10.00%
发文量
1382
审稿时长
70 days
期刊介绍: Neurocomputing publishes articles describing recent fundamental contributions in the field of neurocomputing. Neurocomputing theory, practice and applications are the essential topics being covered.
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