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      Transformer-based Methods for Recognizing Ultra Fine-grained Entities (RUFES)

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          Abstract

          This paper summarizes the participation of the Laboratoire Informatique, Image et Interaction (L3i laboratory) of the University of La Rochelle in the Recognizing Ultra Fine-grained Entities (RUFES) track within the Text Analysis Conference (TAC) series of evaluation workshops. Our participation relies on two neural-based models, one based on a pre-trained and fine-tuned language model with a stack of Transformer layers for fine-grained entity extraction and one out-of-the-box model for within-document entity coreference. We observe that our approach has great potential in increasing the performance of fine-grained entity recognition. Thus, the future work envisioned is to enhance the ability of the models following additional experiments and a deeper analysis of the results.

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          Author and article information

          Journal
          13 April 2021
          Article
          2104.06048
          d19c4f9a-d140-42df-889b-0db4717a6c4a

          http://creativecommons.org/licenses/by-nc-nd/4.0/

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          https://tac.nist.gov/2020/KBP/RUFES/index.html
          cs.CL cs.IR

          Theoretical computer science,Information & Library science
          Theoretical computer science, Information & Library science

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