Intrinsically motivated reinforcement learning for human-robot interaction in the real-world

Neural Netw. 2018 Nov:107:23-33. doi: 10.1016/j.neunet.2018.03.014. Epub 2018 Mar 26.

Abstract

For a natural social human-robot interaction, it is essential for a robot to learn the human-like social skills. However, learning such skills is notoriously hard due to the limited availability of direct instructions from people to teach a robot. In this paper, we propose an intrinsically motivated reinforcement learning framework in which an agent gets the intrinsic motivation-based rewards through the action-conditional predictive model. By using the proposed method, the robot learned the social skills from the human-robot interaction experiences gathered in the real uncontrolled environments. The results indicate that the robot not only acquired human-like social skills but also took more human-like decisions, on a test dataset, than a robot which received direct rewards for the task achievement.

Keywords: Deep reinforcement learning; Human–robot interaction; Intrinsic motivation; Real-world robotics; Social robots.

MeSH terms

  • Deep Learning*
  • Humans
  • Neural Networks, Computer*
  • Robotics / methods*
  • Social Skills*
  • User-Computer Interface*