Semantic similarity models for automated fact-checkingClaimCheck as a claim matching tool

  1. Larraz, Irene 1
  2. Míguez, Rubén 2
  3. Sallicati, Francesca 2
  1. 1 Universidad de Navarra
    info

    Universidad de Navarra

    Pamplona, España

    ROR https://ror.org/02rxc7m23

  2. 2 Newtral
Zeitschrift:
El profesional de la información

ISSN: 1386-6710 1699-2407

Datum der Publikation: 2023

Titel der Ausgabe: Network activisms

Ausgabe: 32

Nummer: 3

Art: Artikel

DOI: 10.3145/EPI.2023.MAY.21 DIALNET GOOGLE SCHOLAR lock_openOpen Access editor

Andere Publikationen in: El profesional de la información

Ziele für nachhaltige Entwicklung

Zusammenfassung

Este artículo presenta el diseño experimental de ClaimCheck, un programa de inteligencia artificial para detectar men-tiras repetidas en el discurso político a partir de un modelo de similitud semántica desarrollado por el medio de verificación Newtral en colaboración con ABC Australia. El estudio revisa el estado del arte sobre el uso de algoritmos para fact-checking y propone una definición de claim matching. Además, detalla el esquema de anotación de frases similares y presenta los resultados de los experimentos con el programa.

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