Impacto de las emociones vertidas por diarios digitales en Twitter

  1. Sergio Arce-García 1
  2. Natalia Orviz-Martínez 1
  3. Tatiana Cuervo-Carabel 1
  1. 1 Universidad Internacional de La Rioja
    info

    Universidad Internacional de La Rioja

    Logroño, España

    ROR https://ror.org/029gnnp81

Revista:
El profesional de la información

ISSN: 1386-6710 1699-2407

Ano de publicación: 2020

Título do exemplar: Pluralismo informativo

Volume: 29

Número: 5

Tipo: Artigo

DOI: 10.3145/EPI.2020.SEP.20 DIALNET GOOGLE SCHOLAR lock_openAcceso aberto editor

Outras publicacións en: El profesional de la información

Obxectivos de Desenvolvemento Sustentable

Resumo

The use of Twitter by newspapers is widespread and is a way to keep readers informed in real time. In this article, we analyze the discourse of the messages released by the ten main general information newspapers in Spain and the reac-tions they provoked on the social network. The objective is to analyze whether the emotional discourse of the news in each newspaper caused greater dissemination among and attention from users, as well as to determine the emotions and feelings expressed by them. To do so, news about important events such as court judgements, street riots, and general elections was followed between October and November 2019. A total of 124,897 tweets collected using machi-ne-learning techniques were analyzed by the application of algorithms which allowed the determination of emotions and valences of feelings. We carried out statistical studies and produced graphs showing the dependence between emo-tional variables and positive or negative sentimental valence. The results showed that, in general, newspapers do not use an excessive amount of emotional speech with the aim of impacting their public. However, differences were found among the newspapers in terms of trying to encourage reader loyalty. The reaction of the users was more linked to the informative facts themselves and the emotions they provoked than to the type of emotional and/or polarized discourse. The day-to-day information determines to a large extent what is consumed by Twitter users, in which changing modes of speech are observed depending on the editorial line of each newspaper.

Información de financiamento

Esta investigación ha sido parcialmente financiada por UNIR Research (http://research.unir.net), Universidad Internacional de La Rioja (UNIR, http://www.unir.net), dentro del Plan Propio de Investigación 2018-2020, Grupo de Investigación TR3s-i.

Financiadores

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