Abstract
Proactive caching is essential for minimizing latency and improving Quality of Experience (QoE) in multi-server edge networks. Federated Deep Reinforcement Learning (FDRL) is a promising approach for developing cache policies tailored to dynamic content requests. However, FDRL faces challenges such as an expanding caching action space due to increased content numbers and difficulty in adapting global information to heteroge-neous edge environments. In this paper, we propose a Personalized Federated Deep Reinforcement Learning framework for Caching, called PF-DRL-Ca, with the aim to maximize system utility while satisfying caching capability constraints. To manage the expanding action space, we employ a new DRL algorithm, Multi-head Deep Q-Network (MH-DQN), which reshapes the action output layers of DQN into a multi-head structure where each head generates a sub-dimensional action. We next integrate the proposed MH-DQN into a personalized federated training framework, employing a layer-wise approach for training to derive a personalized model that can adapt to heterogeneous environments while exploiting the global information to accelerate learning convergence. Our extensive experimental results demonstrate the superiority of MH-DQN over traditional DRL algorithms on a single server, as well as the advantages of the personal federated training architecture compared to other frameworks. Copyright © 2024 IFIP.
Original language | English |
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Title of host publication | Proceedings of 2024 22nd International Symposium on Modeling and Optimization in Mobile, Ad Hoc, and Wireless Networks, WiOpt 2024 |
Place of Publication | USA |
Publisher | IEEE |
Pages | 313-320 |
ISBN (Electronic) | 9783903176652 |
Publication status | Published - 2024 |
Citation
Li, Z., Li, T., Liu, H., & Chan, T.-T. (2024). Personalized federated deep reinforcement learning for heterogeneous edge content caching networks. In Proceedings of 2024 22nd International Symposium on Modeling and Optimization in Mobile, Ad Hoc, and Wireless Networks, WiOpt 2024 (pp. 313-320). IEEE.Keywords
- Content caching
- Deep reinforcement learning
- Heterogeneous environment
- Personalized federated learning