Who Funds Misinformation? A Systematic Analysis of the Ad-related Profit
Routines of Fake News sites
- URL: http://arxiv.org/abs/2202.05079v1
- Date: Thu, 10 Feb 2022 15:07:33 GMT
- Title: Who Funds Misinformation? A Systematic Analysis of the Ad-related Profit
Routines of Fake News sites
- Authors: Emmanouil Papadogiannakis, Panagiotis Papadopoulos, Evangelos P.
Markatos, Nicolas Kourtellis
- Abstract summary: We study more than 2400 popular fake and real news websites and show that well-known legitimate ad networks have a direct advertising relation with more than 40% of these fake news websites.
We show that entities who own fake news websites, also own (or operate) other types of websites for entertainment, business, and politics, pointing to the fact that owning a fake news website is part of a broader business operation.
- Score: 3.936965297430477
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Fake news is an age-old phenomenon, widely assumed to be associated with
political propaganda published to sway public opinion. Yet, with the growth of
social media it has become a lucrative business for web publishers. Despite
many studies performed and countermeasures deployed from researchers and
stakeholders, unreliable news sites have increased their share of engagement
among the top performing news sources in last years. Indeed, stifling fake news
impact depends on the efforts from the society, and the market, in limiting the
(economic) incentives of fake news producers.
In this paper, we aim at enhancing the transparency around these exact
incentives and explore the following main questions: Who supports the existence
of fake news websites via paid ads, either as an advertiser or an ad seller?
Who owns these websites and what other Web business are they into? What
tracking activity do they perform in these websites?
Aiming to answer these questions, we are the first to systematize the
auditing process of fake news revenue flows. We develop a novel ad detection
methodology to identify the companies that advertise in fake news websites and
the intermediary companies responsible for facilitating those ad revenues. We
study more than 2400 popular fake and real news websites and show that
well-known legitimate ad networks, such as of Google, IndexExchange, and
AppNexus, have a direct advertising relation with more than 40% of these fake
news websites, and a re-seller advertising relation with more than 60% of them.
Using a graph clustering approach on an extended set of 114.5K sites connected
with 443K edges, we show that entities who own fake news websites, also own (or
operate) other types of websites for entertainment, business, and politics,
pointing to the fact that owning a fake news website is part of a broader
business operation.
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