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Human-Interactive Robot Learning (HIRL)

Published: 07 March 2022 Publication History

Abstract

With robots poised to enter our daily environments, we conjecture that they will not only need to work for people, but also learn from them. An active area of investigation in the robotics, machine learning, and human-robot interaction communities is the design of teachable robotic agents that can learn interactively from human input. To refer to these research efforts, we use the umbrella term Human-Interactive Robot Learning (HIRL). While algorithmic solutions for robots learning from people have been investigated in a variety of ways, HIRL, as a fairly new research area, is still lacking: 1) a formal set of definitions to classify related but distinct research problems or solutions, 2) benchmark tasks, interactions, and metrics to evaluate the performance of HIRL algorithms and interactions, and 3) clear long-term research challenges to be addressed by different communities. The main goal of this workshop will be to consolidate relevant recent work falling under the HIRL umbrella into a coherent set of long, medium, and short-term research problems, and identify the most pressing future research goals in this area. As HIRL is a developing research area, this workshop is an opportunity to break the existing boundaries between relevant research communities by developing and sharing a diverse set of benchmark tasks and metrics for HIRL, inspired by other fields including neuroscience, biology, and ethics research.

References

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Saleema Amershi, Maya Cakmak, William Bradley Knox, and Todd Kulesza. Power to the people: The role of humans in interactive machine learning. Ai Magazine, 35(4):105--120, 2014.
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Felipe Leno Da Silva, Garrett Warnell, Anna Helena Reali Costa, and Peter Stone. Agents teaching agents: a survey on inter-agent transfer learning. Autonomous Agents and Multi-Agent Systems, 34(1):1--17, 2020.
[3]
Jinying Lin, Zhen Ma, Randy Gomez, Keisuke Nakamura, Bo He, and Guangliang Li. A review on interactive reinforcement learning from human social feedback. IEEE Access, 8:120757--120765, 2020.
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Zhiyu Lin, Brent Harrison, Aaron Keech, and Mark O Riedl. Explore, exploit or listen: Combining human feedback and policy model to speed up deep reinforcement learning in 3d worlds. arXiv preprint arXiv:1709.03969, 2017.
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Harish Ravichandar, Athanasios S Polydoros, Sonia Chernova, and Aude Billard. Recent advances in robot learning from demonstration. Annual Review of Control, Robotics, and Autonomous Systems, 3:297--330, 2020.

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cover image ACM Conferences
HRI '22: Proceedings of the 2022 ACM/IEEE International Conference on Human-Robot Interaction
March 2022
1353 pages

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IEEE Press

Publication History

Published: 07 March 2022

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Author Tags

  1. interactive robot learning
  2. learning from human input
  3. socially intelligent robots
  4. socially interactive learning

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HRI '22
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Overall Acceptance Rate 268 of 1,124 submissions, 24%

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