Abstract

During the first wave of Covid-19 information decoupling could be observed in the flow of news media content. The corollary of the content alignment within and between news sources experienced by readers (i.e., all news transformed into Corona-news), was that the novelty of news content went down as media focused monotonically on the pandemic event. This all-important Covid-19 news theme turned out to be quite persistent as the pandemic continued, resulting in the, from a news media’s perspective, paradoxical situation where the same news was repeated over and over. This information phenomenon, where novelty decreases and persistence increases, has previously been used to track change in news media, but in this study we specifically test the claim that new information decoupling behavior of media can be used to reliably detect change in news media content originating in a negative event, using a Bayesian approach to change point detection.
Original languageEnglish
Publication date2 Jun 2021
Publication statusPublished - 2 Jun 2021
EventDigital Humanities Benelux - Leiden University/online, Leiden, Belgium
Duration: 2 Jun 20214 Jun 2021
Conference number: 2021
https://2021.dhbenelux.org/

Conference

ConferenceDigital Humanities Benelux
Number2021
LocationLeiden University/online
Country/TerritoryBelgium
CityLeiden
Period02/06/202104/06/2021
Internet address

Keywords

  • NLP
  • Digital humanities
  • news media

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