Surveying the Research on Fake News in Social Media: a Tale of Networks
and Language
- URL: http://arxiv.org/abs/2109.07909v1
- Date: Mon, 13 Sep 2021 14:10:44 GMT
- Title: Surveying the Research on Fake News in Social Media: a Tale of Networks
and Language
- Authors: Giancarlo Ruffo (1), Alfonso Semeraro (1), Anastasia Giachanou (2),
Paolo Rosso (3) ((1) Universit\`a degli Studi di Torino, (2) Utrecht
University, (3) Universitat Polit\`ecnica de Val\`encia)
- Abstract summary: The history of journalism and news diffusion is tightly coupled with the effort to dispel hoaxes, misinformation, propaganda, unverified rumours, poor reporting, and messages containing hate and divisions.
With the explosive growth of online social media and billions of individuals engaged with consuming, creating, and sharing news, this ancient problem has surfaced with a renewed intensity.
This has triggered many researchers to develop new methods for studying, understanding, detecting, and preventing fake-news diffusion.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The history of journalism and news diffusion is tightly coupled with the
effort to dispel hoaxes, misinformation, propaganda, unverified rumours, poor
reporting, and messages containing hate and divisions. With the explosive
growth of online social media and billions of individuals engaged with
consuming, creating, and sharing news, this ancient problem has surfaced with a
renewed intensity threatening our democracies, public health, and news outlets
credibility. This has triggered many researchers to develop new methods for
studying, understanding, detecting, and preventing fake-news diffusion; as a
consequence, thousands of scientific papers have been published in a relatively
short period, making researchers of different disciplines to struggle in search
of open problems and most relevant trends. The aim of this survey is threefold:
first, we want to provide the researchers interested in this multidisciplinary
and challenging area with a network-based analysis of the existing literature
to assist them with a visual exploration of papers that can be of interest;
second, we present a selection of the main results achieved so far adopting the
network as an unifying framework to represent and make sense of data, to model
diffusion processes, and to evaluate different debunking strategies. Finally,
we present an outline of the most relevant research trends focusing on the
moving target of fake-news, bots, and trolls identification by means of data
mining and text technologies; despite scholars working on computational
linguistics and networks traditionally belong to different scientific
communities, we expect that forthcoming computational approaches to prevent
fake news from polluting the social media must be developed using hybrid and
up-to-date methodologies.
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