Conference Proceedings
Domain-Aware Multiagent Reinforcement Learning in Navigation
I Saeed, AC Cullen, S Erfani, T Alpcan
Proceedings of the International Joint Conference on Neural Networks | IEEE | Published : 2021
Abstract
Multiagent reinforcement learning has shown success in guiding the agents' behaviour in systems that have realworld significance. In these frameworks, agents learn how to interact with the environment and other agents while satisfying their objectives. Unfortunately, the level of complexity of realworld problems requires a significant investment of computational resources before multiagent reinforcement learning methods are able to deliver results. However, by incorporating a priori domain knowledge, more computationally-efficient algorithms can be developed. In this paper, for the first time, we present a Domain-Aware Multiagent Actor-Critic (DAMAC) algorithm, which integrates domain knowle..
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Awarded by Australian Government
Funding Acknowledgements
This research was funded partially by the Australian Government through the Australian Research Council Discovery Project, DP190102828.