Exploring Latin WordNet synset annotation with LLMs

Daniela Santoro, Beatrice Marchesi, Silvia Zampetta, Marco Del Tredici, Erica Biagetti, Eleonora Maria Gabriella Litta Modignani Picozzi, Claudia Roberta Combei, Stefano Rocchi, Tullio Facchinetti, Riccardo Ginevra, Chiara Zanchi

Risultato della ricerca: Contributo in libroContributo a conferenza

Abstract

This study explores the application of Large Language Models to populate synsets in the Latin WordNet, keeping a human-in-the-loop approach. We compare zero-shot, few-shot, and fine-tuning methods against an English baseline. Quantitative analysis reveals significant improvements from zero-shot to fine-tuned approaches, with the latter outperforming the baseline. Qualitative assessment indicates better performance with verbs and polysemous lemmas. While results are encouraging, human oversight remains crucial for accuracy. Future research could focus on improving performance across different parts of speech and degrees of polysemy, potentially incorporating etymological information or cross-linguistic data.
Lingua originaleInglese
Titolo della pubblicazione ospiteProceedings of the 13th Global Wordnet Conference
EditoreGlobal Wordnet Association
Pagine66-76
Numero di pagine11
ISBN (stampa)979-8-89176-295-4
Stato di pubblicazionePubblicato - 2025

Keywords

  • Large Language Models
  • synsets
  • Latin
  • WordNet

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