Cong Guan, Tao Jiang, Yi-Chen Li, Zongzhang Zhang, Lei Yuan, Yang Yu
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引用次数: 0
Abstract
Real-world multi-agent decision-making systems often have to satisfy some constraints, such as harmfulness, economics, etc., spurring the emergence of Constrained Multi-Agent Reinforcement Learning (CMARL). Existing studies of CMARL mainly focus on training a constrained policy in an online manner, that is, not only maximizing cumulative rewards but also not violating constraints. However, in practice, online learning may be infeasible due to safety restrictions or a lack of high-fidelity simulators. Moreover, as the learned policy runs, new constraints, that are not taken into account during training, may occur. To deal with the above two issues, we propose a method called Constraining an UnconsTrained Multi-Agent Policy with offline data, dubbed CUTMAP, following the popular centralized training with decentralized execution paradigm. Specifically, we have formulated a scalable optimization objective within the framework of multi-agent maximum entropy reinforcement learning for CMARL. This approach is designed to estimate a decomposable Q-function by leveraging an unconstrained “prior policy”1 in conjunction with cost signals extracted from offline data. When a new constraint comes, CUTMAP can reuse the prior policy without re-training it. To tackle the distribution shift challenge in offline learning, we also incorporate a conservative loss term when updating the Q-function. Therefore, the unconstrained prior policy can be trained to satisfy cost constraints through CUTMAP without the need for expensive interactions with the real environment, facilitating the practical application of MARL algorithms. Empirical results in several cooperative multi-agent benchmarks, including StarCraft games, particle games, food search games, and robot control, demonstrate the superior performance of our method.
期刊介绍:
Neural Networks is a platform that aims to foster an international community of scholars and practitioners interested in neural networks, deep learning, and other approaches to artificial intelligence and machine learning. Our journal invites submissions covering various aspects of neural networks research, from computational neuroscience and cognitive modeling to mathematical analyses and engineering applications. By providing a forum for interdisciplinary discussions between biology and technology, we aim to encourage the development of biologically-inspired artificial intelligence.