• DocumentCode
    108103
  • Title

    Neural Control of a Tracking Task via Attention-Gated Reinforcement Learning for Brain-Machine Interfaces

  • Author

    Yiwen Wang ; Fang Wang ; Kai Xu ; Qiaosheng Zhang ; Shaomin Zhang ; Xiaoxiang Zheng

  • Author_Institution
    Key Lab. of Biomed. Eng. of Minist. of Educ., Zhejiang Univ., Hangzhou, China
  • Volume
    23
  • Issue
    3
  • fYear
    2015
  • fDate
    May-15
  • Firstpage
    458
  • Lastpage
    467
  • Abstract
    Reinforcement learning (RL)-based brain machine interfaces (BMIs) enable the user to learn from the environment through interactions to complete the task without desired signals, which is promising for clinical applications. Previous studies exploited Q-learning techniques to discriminate neural states into simple directional actions providing the trial initial timing. However, the movements in BMI applications can be quite complicated, and the action timing explicitly shows the intention when to move. The rich actions and the corresponding neural states form a large state-action space, imposing generalization difficulty on Q-learning. In this paper, we propose to adopt attention-gated reinforcement learning (AGREL) as a new learning scheme for BMIs to adaptively decode high-dimensional neural activities into seven distinct movements (directional moves, holdings and resting) due to the efficient weight-updating. We apply AGREL on neural data recorded from M1 of a monkey to directly predict a seven-action set in a time sequence to reconstruct the trajectory of a center-out task. Compared to Q-learning techniques, AGREL could improve the target acquisition rate to 90.16% in average with faster convergence and more stability to follow neural activity over multiple days, indicating the potential to achieve better online decoding performance for more complicated BMI tasks.
  • Keywords
    brain-computer interfaces; electroencephalography; learning (artificial intelligence); medical signal processing; neurophysiology; trajectory control; BMI applications; Q-learning techniques; attention-gated reinforcement learning; attention-gated reinforcement learning-based brain machine interfaces; center-out task; clinical applications; directional moves; high-dimensional neural activities; holdings; neural control; neural data recording; neural states; resting; simple directional actions; state-action space; target acquisition rate; tracking task; trial initial timing; Biomedical engineering; Decoding; Educational institutions; Firing; Learning (artificial intelligence); Timing; Trajectory; Attention-gated reinforcement learning (AGREL); brain-machine interfaces (BMIs); neural control; trajectory tracking;
  • fLanguage
    English
  • Journal_Title
    Neural Systems and Rehabilitation Engineering, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    1534-4320
  • Type

    jour

  • DOI
    10.1109/TNSRE.2014.2341275
  • Filename
    6863657