ROLGNov 29, 2023

Transfer Learning in Robotics: An Upcoming Breakthrough? A Review of Promises and Challenges

arXiv:2311.18044v347 citationsh-index: 77
Originality Synthesis-oriented
AI Analysis

This is an incremental review paper that synthesizes existing knowledge to address roadblocks in applying transfer learning to robotics.

The paper provides a unified concept and taxonomy for transfer learning in robotics, reviewing its promises and challenges to guide future research efforts.

Transfer learning is a conceptually-enticing paradigm in pursuit of truly intelligent embodied agents. The core concept -- reusing prior knowledge to learn in and from novel situations -- is successfully leveraged by humans to handle novel situations. In recent years, transfer learning has received renewed interest from the community from different perspectives, including imitation learning, domain adaptation, and transfer of experience from simulation to the real world, among others. In this paper, we unify the concept of transfer learning in robotics and provide the first taxonomy of its kind considering the key concepts of robot, task, and environment. Through a review of the promises and challenges in the field, we identify the need of transferring at different abstraction levels, the need of quantifying the transfer gap and the quality of transfer, as well as the dangers of negative transfer. Via this position paper, we hope to channel the effort of the community towards the most significant roadblocks to realize the full potential of transfer learning in robotics.

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