Working Paper

Ranking for Engagement: How Social Media Algorithms Fuel Misinformation and Polarization

Fabrizio Germano, Vicenç Gómez, Francesco Sobbrio
CESifo, Munich, 2022

CESifo Working Paper No. 10011

Social media are at the center of countless debates on polarization, misinformation, and even the state of democracy in various parts of the world. An essential feature of social media is their recommendation algorithm that determines the ranking of contents presented to the users. This paper studies the dynamic feedback between a recommender algorithm and user behavior; and develops a theoretical framework to evaluate the effect of popularity parameters on measures of platform and user welfare. The model shows the presence of a fundamental trade-off between platform engagement and user welfare. A higher weight assigned by the algorithm to online social interactions such as likes and shares increases engagement while having a detrimental effect in terms of misinformation—crowding-out the truth—and polarization. Besides increasing actual polarization, an increase in the weight assigned to social interactions may also increase perceived polarization, as it makes it more likely for individuals to see more extreme content—both like-minded and not—in higher-ranked positions. Finally, we provide empirical evidence in support of the main predictions of our model. By leveraging a rich survey dataset from Italy and exploiting Facebook’s 2018 “Meaningful Social Interactions” update—which significantly boosted the weight given to social interaction in its ranking algorithm—we find an increase in political polarization and ideological extremism in Italy, following the change in Facebook’s algorithm.

CESifo Category
Behavioural Economics
Economics of Digitization
Keywords: social media, recommendation algorithm, ranking algorithm, feedback loop, engagement, misinformation, polarization, popularity ranking, algorithmic gatekeeper
JEL Classification: D720, D830, L820, L860