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Reputation Systems for News on Twitter: A Large-Scale Study (1802.08066v3)

Published 22 Feb 2018 in cs.SI

Abstract: Social networks offer a ready channel for fake and misleading news to spread and exert influence. This paper examines the performance of different reputation algorithms when applied to a large and statistically significant portion of the news that are spread via Twitter. Our main result is that simple algorithms based on the identity of the users spreading the news, as well as the words appearing in the titles and descriptions of the linked articles, are able to identify a large portion of fake or misleading news, while incurring only very low (<1%) false positive rates for mainstream websites. We believe that these algorithms can be used as the basis of practical, large-scale systems for indicating to consumers which news sites deserve careful scrutiny and skepticism.

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Authors (7)
  1. Luca de Alfaro (23 papers)
  2. Massimo Di Pierro (6 papers)
  3. Rakshit Agrawal (9 papers)
  4. Eugenio Tacchini (3 papers)
  5. Gabriele Ballarin (3 papers)
  6. Marco L. Della Vedova (5 papers)
  7. Stefano Moret (8 papers)
Citations (9)