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arxiv:2401.17824

A Survey of Pre-trained Language Models for Processing Scientific Text

Published on Jan 31, 2024
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Abstract

A comprehensive review of scientific language models covers their effectiveness across various domains, tasks, and datasets and discusses future challenges.

The number of Language Models (LMs) dedicated to processing scientific text is on the rise. Keeping pace with the rapid growth of scientific LMs (SciLMs) has become a daunting task for researchers. To date, no comprehensive surveys on SciLMs have been undertaken, leaving this issue unaddressed. Given the constant stream of new SciLMs, appraising the state-of-the-art and how they compare to each other remain largely unknown. This work fills that gap and provides a comprehensive review of SciLMs, including an extensive analysis of their effectiveness across different domains, tasks and datasets, and a discussion on the challenges that lie ahead.

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