Exploring Cross-Lingual Named Entity Recognition: A Study of the ConNER Model for the Italian Language

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dc.contributor.advisor Albarelli, Andrea it_IT
dc.contributor.author Ferraresso, Francesca <1998> it_IT
dc.date.accessioned 2023-10-01 it_IT
dc.date.accessioned 2024-02-21T12:17:13Z
dc.date.available 2024-02-21T12:17:13Z
dc.date.issued 2023-11-03 it_IT
dc.identifier.uri http://hdl.handle.net/10579/25337
dc.description.abstract This dissertation provides a comprehensive overview of Named Entity Recognition (NER) in Natural Language Processing (NLP), encompassing its historical context, key principles, and cutting-edge techniques. It focuses on cross-lingual NER models, exploring how they leverage shared knowledge among languages to enhance performance. We investigate the advantages and limitations of cross-lingual NER, considering reduced data annotation and improved generalization and their challenges, including language variations and resource availability. A pivotal aspect is the analysis of ConNER, a state-of-the-art cross-lingual NER model, with a focus on its performance in the Italian language. Our empirical study employs a modified MultiNERD dataset covering English, German, French and Spanish, shedding light on ConNER's adaptability to other languages. Ultimately, this research aims to enrich NER methodology, offering insights into the potential of cross-lingual approaches for improving NER systems. it_IT
dc.language.iso en it_IT
dc.publisher Università Ca' Foscari Venezia it_IT
dc.rights © Francesca Ferraresso, 2023 it_IT
dc.title Exploring Cross-Lingual Named Entity Recognition: A Study of the ConNER Model for the Italian Language it_IT
dc.title.alternative Exploring Cross-Lingual Named Entity Recognition: A Study of the ConNER Model for the Italian Language it_IT
dc.type Master's Degree Thesis it_IT
dc.degree.name Data analytics for business and society it_IT
dc.degree.level Laurea magistrale it_IT
dc.degree.grantor Dipartimento di Economia it_IT
dc.description.academicyear LM_2022/2023_sessione-autunnale it_IT
dc.rights.accessrights openAccess it_IT
dc.thesis.matricno 866698 it_IT
dc.subject.miur INF/01 INFORMATICA it_IT
dc.description.note it_IT
dc.degree.discipline it_IT
dc.contributor.co-advisor it_IT
dc.date.embargoend it_IT
dc.provenance.upload Francesca Ferraresso (866698@stud.unive.it), 2023-10-01 it_IT
dc.provenance.plagiarycheck Andrea Albarelli (albarelli@unive.it), 2023-10-16 it_IT


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