English

Learning User Preferences via Reinforcement Learning with Spatial Interface Valuing

Machine Learning 2019-02-05 v1 Artificial Intelligence Human-Computer Interaction Machine Learning

Abstract

Interactive Machine Learning is concerned with creating systems that operate in environments alongside humans to achieve a task. A typical use is to extend or amplify the capabilities of a human in cognitive or physical ways, requiring the machine to adapt to the users' intentions and preferences. Often, this takes the form of a human operator providing some type of feedback to the user, which can be explicit feedback, implicit feedback, or a combination of both. Explicit feedback, such as through a mouse click, carries a high cognitive load. The focus of this study is to extend the current state of the art in interactive machine learning by demonstrating that agents can learn a human user's behavior and adapt to preferences with a reduced amount of explicit human feedback in a mixed feedback setting. The learning agent perceives a value of its own behavior from hand gestures given via a spatial interface. This feedback mechanism is termed Spatial Interface Valuing. This method is evaluated experimentally in a simulated environment for a grasping task using a robotic arm with variable grip settings. Preliminary results indicate that learning agents using spatial interface valuing can learn a value function mapping spatial gestures to expected future rewards much more quickly as compared to those same agents just receiving explicit feedback, demonstrating that an agent perceiving feedback from a human user via a spatial interface can serve as an effective complement to existing approaches.

Keywords

Cite

@article{arxiv.1902.00719,
  title  = {Learning User Preferences via Reinforcement Learning with Spatial Interface Valuing},
  author = {Miguel Alonso},
  journal= {arXiv preprint arXiv:1902.00719},
  year   = {2019}
}

Comments

Submitted to HCI International 2019 Parallel Session on Spatial Interaction for Universal Access

R2 v1 2026-06-23T07:30:17.577Z