In contemporary hyper-connected societies, a peculiar paradox characterizes the collective representations gravitating in the social imaginary. On the one side, they rapidly spread and evolve through communication on social media; on the other side, they are objectified in the form of digital data organized in textual databases, persistent and searchable. This article aims to present a quantitative text analysis technique known as «topic modeling» – which allows the fast exploration of «big» text data while taking into account the polysemic and relational character of language, thus fostering an interpretive gaze. Topic models are increasingly employed in the fields of digital humanities, political sciences and cultural sociology. Here, I will illustrate the methodological implications of topic models using a non-technical language and focusing, in particular, on applicability to online communicative interactions. I will present a case study consisting in the analysis of about 420k unique tweets regarding the 2016 edition of Festival di Sanremo. Through topic modeling, I inductively reconstructed the main frames employed by more than 88k users twitting about this media event. Subsequently, I was able to automatically identify the prevalent frame adopted by each Twitter user involved in the digital discussion.

Studiare i «social media» con i «topic models» : Sanremo 2016 su Twitter = Analyzing Social Media with Topic Models : Sanremo 2016 on Twitter / M. Airoldi. - In: STUDI CULTURALI. - ISSN 1824-369X. - 13:3(2016), pp. 431-448. [10.1405/85342]

Studiare i «social media» con i «topic models» : Sanremo 2016 su Twitter = Analyzing Social Media with Topic Models : Sanremo 2016 on Twitter

M. Airoldi
2016

Abstract

In contemporary hyper-connected societies, a peculiar paradox characterizes the collective representations gravitating in the social imaginary. On the one side, they rapidly spread and evolve through communication on social media; on the other side, they are objectified in the form of digital data organized in textual databases, persistent and searchable. This article aims to present a quantitative text analysis technique known as «topic modeling» – which allows the fast exploration of «big» text data while taking into account the polysemic and relational character of language, thus fostering an interpretive gaze. Topic models are increasingly employed in the fields of digital humanities, political sciences and cultural sociology. Here, I will illustrate the methodological implications of topic models using a non-technical language and focusing, in particular, on applicability to online communicative interactions. I will present a case study consisting in the analysis of about 420k unique tweets regarding the 2016 edition of Festival di Sanremo. Through topic modeling, I inductively reconstructed the main frames employed by more than 88k users twitting about this media event. Subsequently, I was able to automatically identify the prevalent frame adopted by each Twitter user involved in the digital discussion.
No
Italian
topic models; Sanremo; social Media; Twitter; collective representations
Settore SPS/08 - Sociologia dei Processi Culturali e Comunicativi
Articolo
Esperti anonimi
Pubblicazione scientifica
2016
Società Editrice Il Mulino
13
3
431
448
18
Pubblicato
Periodico con rilevanza nazionale
NON aderisco
info:eu-repo/semantics/article
Studiare i «social media» con i «topic models» : Sanremo 2016 su Twitter = Analyzing Social Media with Topic Models : Sanremo 2016 on Twitter / M. Airoldi. - In: STUDI CULTURALI. - ISSN 1824-369X. - 13:3(2016), pp. 431-448. [10.1405/85342]
none
Prodotti della ricerca::01 - Articolo su periodico
1
262
Article (author)
no
M. Airoldi
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2434/470678
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