Back to Search Start Over

An Exploration of Unreliable News Classification in Brazil and The U.S

Authors :
Gruppi, Mauricio
Horne, Benjamin D.
Adali, Sibel
Publication Year :
2018

Abstract

The propagation of unreliable information is on the rise in many places around the world. This expansion is facilitated by the rapid spread of information and anonymity granted by the Internet. The spread of unreliable information is a wellstudied issue and it is associated with negative social impacts. In a previous work, we have identified significant differences in the structure of news articles from reliable and unreliable sources in the US media. Our goal in this work was to explore such differences in the Brazilian media. We found significant features in two data sets: one with Brazilian news in Portuguese and another one with US news in English. Our results show that features related to the writing style were prominent in both data sets and, despite the language difference, some features have a universal behavior, being significant to both US and Brazilian news articles. Finally, we combined both data sets and used the universal features to build a machine learning classifier to predict the source type of a news article as reliable or unreliable.<br />Comment: Presented and Peer-Reviewed at NECO 2018

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1806.02875
Document Type :
Working Paper