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Noise-Regularized Advantage Value for Multi-Agent Reinforcement Learning

Author

Listed:
  • Siying Wang

    (School of Computer Science and Engineering, University of Electronic Science and Technology of China, Chengdu 611731, China)

  • Wenyu Chen

    (School of Computer Science and Engineering, University of Electronic Science and Technology of China, Chengdu 611731, China)

  • Jian Hu

    (Graduate Institute of Networking and Multimedia, National Taiwan University, Taipei 106, Taiwan)

  • Siyue Hu

    (Department of Computer Science & Information Engineering, National Taiwan University, Taipei 106, Taiwan)

  • Liwei Huang

    (School of Computer Science and Engineering, University of Electronic Science and Technology of China, Chengdu 611731, China
    The State Key Laboratory of IoTSC, University of Macau, Taipa, Macau 999078, China)

Abstract

Leveraging global state information to enhance policy optimization is a common approach in multi-agent reinforcement learning (MARL). Even with the supplement of state information, the agents still suffer from insufficient exploration in the training stage. Moreover, training with batch-sampled examples from the replay buffer will induce the policy overfitting problem, i.e., multi-agent proximal policy optimization (MAPPO) may not perform as good as independent PPO (IPPO) even with additional information in the centralized critic. In this paper, we propose a novel noise-injection method to regularize the policies of agents and mitigate the overfitting issue. We analyze the cause of policy overfitting in actor–critic MARL, and design two specific patterns of noise injection applied to the advantage function with random Gaussian noise to stabilize the training and enhance the performance. The experimental results on the Matrix Game and StarCraft II show the higher training efficiency and superior performance of our method, and the ablation studies indicate our method will keep higher entropy of agents’ policies during training, which leads to more exploration.

Suggested Citation

  • Siying Wang & Wenyu Chen & Jian Hu & Siyue Hu & Liwei Huang, 2022. "Noise-Regularized Advantage Value for Multi-Agent Reinforcement Learning," Mathematics, MDPI, vol. 10(15), pages 1-15, August.
  • Handle: RePEc:gam:jmathe:v:10:y:2022:i:15:p:2728-:d:878489
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    References listed on IDEAS

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    1. Volodymyr Mnih & Koray Kavukcuoglu & David Silver & Andrei A. Rusu & Joel Veness & Marc G. Bellemare & Alex Graves & Martin Riedmiller & Andreas K. Fidjeland & Georg Ostrovski & Stig Petersen & Charle, 2015. "Human-level control through deep reinforcement learning," Nature, Nature, vol. 518(7540), pages 529-533, February.
    2. Krešimir Kušić & Edouard Ivanjko & Filip Vrbanić & Martin Gregurić & Ivana Dusparic, 2021. "Spatial-Temporal Traffic Flow Control on Motorways Using Distributed Multi-Agent Reinforcement Learning," Mathematics, MDPI, vol. 9(23), pages 1-28, November.
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