Active Feedback Learning with Rich Feedback.

Yu, Hang.

Short, Elaine Schaertl.

2021

Description
  • Keywords: deep learning, human-robot interaction, interactive reinforcement learning, rich feedback.

    Topic: Computing methodologies / Machine learning / Learning paradigms / Reinforcement learning

    Topic: Computer systems organization / Embedded and cyber-physical systems / Robotics

    ACM Open.
This object is in collection Permanent URL Citation
  • Hang Yu, and Elaine Schaertl Short. "Active Feedback Learning with Rich Feedback." Companion of the 2021 ACM/IEEE International Conference on Human-Robot Interaction, 2021
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z603rc31v
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DOI:
10.1145/3434074.3447207