• DocumentCode
    78262
  • Title

    Gaussian Processes for Data-Efficient Learning in Robotics and Control

  • Author

    Deisenroth, Marc Peter ; Fox, D. ; Rasmussen, Carl Edward

  • Author_Institution
    Department of Computing, Imperial College London, 180 Queen’s Gate, London SW72AZ, United Kingdom
  • Volume
    37
  • Issue
    2
  • fYear
    2015
  • fDate
    Feb. 2015
  • Firstpage
    408
  • Lastpage
    423
  • Abstract
    Autonomous learning has been a promising direction in control and robotics for more than a decade since data-driven learning allows to reduce the amount of engineering knowledge, which is otherwise required. However, autonomous reinforcement learning (RL) approaches typically require many interactions with the system to learn controllers, which is a practical limitation in real systems, such as robots, where many interactions can be impractical and time consuming. To address this problem, current learning approaches typically require task-specific knowledge in form of expert demonstrations, realistic simulators, pre-shaped policies, or specific knowledge about the underlying dynamics. In this paper, we follow a different approach and speed up learning by extracting more information from data. In particular, we learn a probabilistic, non-parametric Gaussian process transition model of the system. By explicitly incorporating model uncertainty into long-term planning and controller learning our approach reduces the effects of model errors, a key problem in model-based learning. Compared to state-of-the art RL our model-based policy search method achieves an unprecedented speed of learning. We demonstrate its applicability to autonomous learning in real robot and control tasks.
  • Keywords
    Approximation methods; Computational modeling; Data models; Predictive models; Probabilistic logic; Robots; Uncertainty; Bayesian inference; Gaussian processes; Policy search; control; reinforcement learning; robotics;
  • fLanguage
    English
  • Journal_Title
    Pattern Analysis and Machine Intelligence, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    0162-8828
  • Type

    jour

  • DOI
    10.1109/TPAMI.2013.218
  • Filename
    6654139