Current AI systems, including smart search engines and recommendation systems tools for streamlining literature reviews, and interactive question-answering platforms, are becoming indispensable for researchers to navigate and understand the vast landscape of scientific knowledge.Taxonomies and ontologies of research topics are key to this process, but manually creating them is costly and often leads to outdated results.This poster paper shows the use of SciBERT model to automatically generate research topic ontologies.Our model excels at identifying semantic relationships between research topics, outperforming traditional methods.This approach promises to streamline the creation of accurate and up-to-date ontologies, enhancing the effectiveness of AI tools for researchers.

Pisu, A., Pompianu, L., Salatino, A., Osborne, F., Riboni, D., Motta, E., et al. (2024). Classifying Scientific Topic Relationships with SciBERT. In Proceedings of Posters, Demos, Workshops, and Tutorials of the 20th International Conference on Semantic Systems co-located with 20th International Conference on Semantic Systems (SEMANTiCS 2024) (pp.1-5). CEUR-WS.

Classifying Scientific Topic Relationships with SciBERT

Osborne F.;
2024

Abstract

Current AI systems, including smart search engines and recommendation systems tools for streamlining literature reviews, and interactive question-answering platforms, are becoming indispensable for researchers to navigate and understand the vast landscape of scientific knowledge.Taxonomies and ontologies of research topics are key to this process, but manually creating them is costly and often leads to outdated results.This poster paper shows the use of SciBERT model to automatically generate research topic ontologies.Our model excels at identifying semantic relationships between research topics, outperforming traditional methods.This approach promises to streamline the creation of accurate and up-to-date ontologies, enhancing the effectiveness of AI tools for researchers.
paper
Knowledge Graph Generation; Language Models; Ontology Generation; Research Topics; SciBERT;
English
Joint of Posters, Demos, Workshops, and Tutorials of the 20th International Conference on Semantic Systems, SEMANTiCS-PDWT 2024 - 17 September 2024 through 19 September 2024
2024
Garijo, D; Gentile, AL; Kurteva, A; Mannocci, A; Osborne, F; Vahdati, S
Proceedings of Posters, Demos, Workshops, and Tutorials of the 20th International Conference on Semantic Systems co-located with 20th International Conference on Semantic Systems (SEMANTiCS 2024)
2024
3759
1
5
https://ceur-ws.org/Vol-3759/
open
Pisu, A., Pompianu, L., Salatino, A., Osborne, F., Riboni, D., Motta, E., et al. (2024). Classifying Scientific Topic Relationships with SciBERT. In Proceedings of Posters, Demos, Workshops, and Tutorials of the 20th International Conference on Semantic Systems co-located with 20th International Conference on Semantic Systems (SEMANTiCS 2024) (pp.1-5). CEUR-WS.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/521194
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