Crowding out the truth? A simple model of misinformation, polarization
and meaningful social interactions
- URL: http://arxiv.org/abs/2210.02248v1
- Date: Wed, 5 Oct 2022 13:26:08 GMT
- Title: Crowding out the truth? A simple model of misinformation, polarization
and meaningful social interactions
- Authors: Fabrizio Germano, Vicen\c{c} G\'omez, Francesco Sobbrio
- Abstract summary: We evaluate the effect of key parameters of ranking algorithms, namely popularity and personalization parameters, on measures of platform engagement, misinformation and polarization.
The results show that an increase in the weight assigned to online social interactions and to personalized content may increase engagement on the social media platform, while at the same time increasing misinformation and/or polarization.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: This paper provides a simple theoretical framework to evaluate the effect of
key parameters of ranking algorithms, namely popularity and personalization
parameters, on measures of platform engagement, misinformation and
polarization. The results show that an increase in the weight assigned to
online social interactions (e.g., likes and shares) and to personalized content
may increase engagement on the social media platform, while at the same time
increasing misinformation and/or polarization. By exploiting Facebook's 2018
"Meaningful Social Interactions" algorithmic ranking update, we also provide
direct empirical support for some of the main predictions of the model.
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