La semiotica può migliorare l’apprendimento supervisionato delle reti neurali? Il caso di studio del tweet di Papa Francesco
Capitolo di libro
Data di Pubblicazione:
2023
Abstract:
The paper focuses on a case–study: a corpus of 1234 Italian
tweets in reply to Pope Francis’ ecological tweets related to the
encyclical letter Laudato si’ has been collected and labelled by the
research team of the semiotic and big data lab at the University of
Turin using semiotic categories to substitute the vague notion of
“subjectivity” in use in sentiment analysis. A simple neural network
has been trained on the corpus to classify messages into “history” and
“discourse” with a final accuracy score of 97%. The paper explores
the practical and social implications of the feasibility study as well as
its limitations and suggests further transdisciplinary research using
semiotics as a standard vocabulary to increase cooperation between
social and computer sciences. The analysis is accompanied by a
historical premise and a brief analysis of the concordance between
Saint Francis of Assisi’s Canticle of the Creatures and Pope Francis’
encyclical letter Laudato si’.
Tipologia CRIS:
02A-Contributo in volume
Keywords:
Actor Network Theory, natural language processing, sentiment analysis, subjectivity, machine learning
Elenco autori:
Francesco Galofaro; Magdalena Maria Kubas
Link alla scheda completa:
Link al Full Text:
Titolo del libro:
Nuovi media, nuovi miti