From IEEE TVT: Resource Allocation for Dynamic Vehicular Networks

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Authored by Ying He, Yuhang Wang, Qiuzhen Lin, and Jianqiang Li
4 years 4 months ago
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Full title—Meta-Hierarchical Reinforcement Learning (MHRL)-based Dynamic Resource Allocation for Dynamic Vehicular Networks

In this paper, the authors propose a general framework that can enable fast-adaptive resource allocation for dynamic vehicular environments. They combine hierarchical reinforcement learning with meta learning, which makes our proposed framework quickly adapt to a new environment by only fine-tuning the top-level master network, and meanwhile the low-level sub-networks can make the right resource allocation policy.

Full Article: IEEE Transactions on Vehicular Technology, Early Access