Preface to the Special Issue of the TAL Journal on Scholarly Document Processing
By: Florian Boudin, Akiko Aizawa
Potential Business Impact:
Helps scientists find important research faster.
The rapid growth of scholarly literature makes it increasingly difficult for researchers to keep up with new knowledge. Automated tools are now more essential than ever to help navigate and interpret this vast body of information. Scientific papers pose unique difficulties, with their complex language, specialized terminology, and diverse formats, requiring advanced methods to extract reliable and actionable insights. Large language models (LLMs) offer new opportunities, enabling tasks such as literature reviews, writing assistance, and interactive exploration of research. This special issue of the TAL journal highlights research addressing these challenges and, more broadly, research on natural language processing and information retrieval for scholarly and scientific documents.
Similar Papers
Patience is all you need! An agentic system for performing scientific literature review
Information Retrieval
Helps computers understand science papers better.
A Multi-Task Evaluation of LLMs' Processing of Academic Text Input
Computation and Language
Computers can't yet judge science papers well.
The Empowerment of Science of Science by Large Language Models: New Tools and Methods
Computation and Language
AI helps scientists discover new ideas faster.