Textual Analysis of ICALEPCS and IPAC Conference Proceedings: Revealing
Research Trends, Topics, and Collaborations for Future Insights and Advanced
Search
- URL: http://arxiv.org/abs/2310.08954v1
- Date: Fri, 13 Oct 2023 08:55:19 GMT
- Title: Textual Analysis of ICALEPCS and IPAC Conference Proceedings: Revealing
Research Trends, Topics, and Collaborations for Future Insights and Advanced
Search
- Authors: Antonin Sulc, Annika Eichler, Tim Wilksen
- Abstract summary: We use natural language processing techniques to extract meaningful information from the abstracts and papers of past conference proceedings.
We extract topics to visualize and identify trends, analyze their evolution to identify emerging research directions, and highlight interesting publications.
- Score: 2.1792283995628465
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: In this paper, we show a textual analysis of past ICALEPCS and IPAC
conference proceedings to gain insights into the research trends and topics
discussed in the field. We use natural language processing techniques to
extract meaningful information from the abstracts and papers of past conference
proceedings. We extract topics to visualize and identify trends, analyze their
evolution to identify emerging research directions, and highlight interesting
publications based solely on their content with an analysis of their network.
Additionally, we will provide an advanced search tool to better search the
existing papers to prevent duplication and easier reference findings. Our
analysis provides a comprehensive overview of the research landscape in the
field and helps researchers and practitioners to better understand the
state-of-the-art and identify areas for future research.
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