핵심 개념
This research introduces a reinforcement learning framework that leverages accessibility measures to guide a language model in rewriting scholarly abstracts into more comprehensible versions for a wider audience.
Wang, H., Clark, J., McKelvey, H., Sterman, L., Gao, Z., Tian, Z., Kübler, S., & Liu, X. (2024). Science Out of Its Ivory Tower: Improving Accessibility with Reinforcement Learning. arXiv preprint arXiv:2410.17088.
This paper addresses the challenge of making scientific research more accessible to the public by developing a reinforcement learning framework that simplifies scholarly abstracts into more comprehensible language. The authors aim to overcome the limitations of supervised fine-tuning methods, which often struggle to achieve sufficient simplification, particularly in terms of technical jargon replacement.