What makes Twitter users retweet risk-related information
Scientists uncover how information related to potential
dangers can spread on social media and how this can be prevented
Osaka University
In an Internet-driven world, social media has become the
go-to source of all kinds of information.
This is especially relevant in crisis-like situations, when warnings and risk-related information are actively circulated on social media.
But currently, there is no way of determining the accuracy of the information. This has occasionally resulted in the spread of misinformation, with some readers often bearing the brunt.
In a study published in Japanese Psychological Research, scientists at Osaka University, including Prof Asako Miura, found a pattern through which information spreads on social media -- which could help prevent the spread of fake news.
Prof Miura says, "Dissemination of information through social media is often associated with false rumors. In order to prevent this, we wanted to unravel the underlying mechanisms by digging deeper into how these false rumors spread."
This is especially relevant in crisis-like situations, when warnings and risk-related information are actively circulated on social media.
But currently, there is no way of determining the accuracy of the information. This has occasionally resulted in the spread of misinformation, with some readers often bearing the brunt.
In a study published in Japanese Psychological Research, scientists at Osaka University, including Prof Asako Miura, found a pattern through which information spreads on social media -- which could help prevent the spread of fake news.
Prof Miura says, "Dissemination of information through social media is often associated with false rumors. In order to prevent this, we wanted to unravel the underlying mechanisms by digging deeper into how these false rumors spread."
The scientists focused on Twitter, a popular site where
users can disseminate or share information through the "retweet"
feature.
Conventional models of information diffusion fail to adequately explain the exact transmission route on social media, as they do not take into account individual user characteristics.
Therefore, to study these characteristics, the scientists first selected 10 highly retweeted (more than 50 times) risk-related tweets.
Based on Slovic's well-known definition of risk perception, a cognitive model used to assess how people perceive certain risks, they assessed whether users perceived these risks as "dreadful" (related to large-scale events with potentially dire consequences) or "unknown" (when the impact of the event is unknown).
They then analyzed the personal networks of the users who tweeted/retweeted particular tweets -- specifically the number of followers, followees, and mutual connections.
Conventional models of information diffusion fail to adequately explain the exact transmission route on social media, as they do not take into account individual user characteristics.
Therefore, to study these characteristics, the scientists first selected 10 highly retweeted (more than 50 times) risk-related tweets.
Based on Slovic's well-known definition of risk perception, a cognitive model used to assess how people perceive certain risks, they assessed whether users perceived these risks as "dreadful" (related to large-scale events with potentially dire consequences) or "unknown" (when the impact of the event is unknown).
They then analyzed the personal networks of the users who tweeted/retweeted particular tweets -- specifically the number of followers, followees, and mutual connections.
They found that users with fewer connections tend to spread
information arbitrarily, possibly owing to a lack of experience or awareness.
But, users with a high number of mutual connections were more emotionally
driven -- they were more likely to spread dreadful information, possibly
intending to share their reactions with the public.
Prof Miura explains, "Our study showed the existence of an information diffusion mechanism on social media that cannot be explained by conventional theoretical models. We showed that risk perception has a significant impact on the 'retweetability' of tweets."
Prof Miura explains, "Our study showed the existence of an information diffusion mechanism on social media that cannot be explained by conventional theoretical models. We showed that risk perception has a significant impact on the 'retweetability' of tweets."
By identifying the user network characteristics on Twitter,
this study potentially offers a solution to prevent fake news dissemination.
These characteristics can be leveraged to maximize the spread of accurate
information, ensuring that appropriate measures are taken.
Prof Miura concludes, "Our research provides an opportunity for people to rethink how false information is spread and to deliver accurate information via social media."
Prof Miura concludes, "Our research provides an opportunity for people to rethink how false information is spread and to deliver accurate information via social media."