A Survey on Echo Chambers on Social Media: Description, Detection and Mitigation
Echo chambers on social media are a significant problem that can elicit a number of negative consequences, most recently affecting the response to COVID-19. Echo chambers promote conspiracy theories about the virus and are found to be linked to vaccine hesitancy, less compliance with mask mandates,...
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Zusammenfassung: | Echo chambers on social media are a significant problem that can elicit a
number of negative consequences, most recently affecting the response to
COVID-19. Echo chambers promote conspiracy theories about the virus and are
found to be linked to vaccine hesitancy, less compliance with mask mandates,
and the practice of social distancing. Moreover, the problem of echo chambers
is connected to other pertinent issues like political polarization and the
spread of misinformation. An echo chamber is defined as a network of users in
which users only interact with opinions that support their pre-existing beliefs
and opinions, and they exclude and discredit other viewpoints. This survey aims
to examine the echo chamber phenomenon on social media from a social computing
perspective and provide a blueprint for possible solutions. We survey the
related literature to understand the attributes of echo chambers and how they
affect the individual and society at large. Additionally, we show the
mechanisms, both algorithmic and psychological, that lead to the formation of
echo chambers. These mechanisms could be manifested in two forms: (1) the bias
of social media's recommender systems and (2) internal biases such as
confirmation bias and homophily. While it is immensely challenging to mitigate
internal biases, there has been great efforts seeking to mitigate the bias of
recommender systems. These recommender systems take advantage of our own biases
to personalize content recommendations to keep us engaged in order to watch
more ads. Therefore, we further investigate different computational approaches
for echo chamber detection and prevention, mainly based around recommender
systems. |
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DOI: | 10.48550/arxiv.2112.05084 |