The widespread use of social media has highlighted potential negative impacts on society and individuals, largely driven by recommendation algorithms that shape user behavior and social dynamics. Understanding these algorithms is essential but challenging due to the complex, distributed nature of social media networks as well as limited access to real-world data. This study proposes to use academic social networks as a proxy for investigating recommendation systems in social media. By employing Graph Neural Networks (GNNs), we develop a model that separates the prediction of academic infosphere from behavior prediction, allowing us to simulate recommender-generated infospheres and assess the model's performance in predicting future co-authorships. Our approach aims to improve our understanding of recommendation systems' roles and social networks modeling. To support the reproducibility of our work we publicly make available our implementations: this https URL

Guidotti, S., Donabauer, G., Somazzi, S., Kruschwitz, U., Taibi, D., Ognibene, D. (2024). Modeling Social Media Recommendation Impacts Using Academic Networks: A Graph Neural Network Approach (SHORT paper). Intervento presentato a: RecSoGood 2024: First International Workshop on Recommender Systems for Sustainability and Social Good co-located with RecSys 2024 The 18th ACM Recommender Systems Conference - October 14-18, 2024, Bari, Italy [10.48550/arXiv.2410.04552].

Modeling Social Media Recommendation Impacts Using Academic Networks: A Graph Neural Network Approach (SHORT paper)

Guidotti, S
Primo
;
Donabauer, G;Ognibene, D
Ultimo
2024

Abstract

The widespread use of social media has highlighted potential negative impacts on society and individuals, largely driven by recommendation algorithms that shape user behavior and social dynamics. Understanding these algorithms is essential but challenging due to the complex, distributed nature of social media networks as well as limited access to real-world data. This study proposes to use academic social networks as a proxy for investigating recommendation systems in social media. By employing Graph Neural Networks (GNNs), we develop a model that separates the prediction of academic infosphere from behavior prediction, allowing us to simulate recommender-generated infospheres and assess the model's performance in predicting future co-authorships. Our approach aims to improve our understanding of recommendation systems' roles and social networks modeling. To support the reproducibility of our work we publicly make available our implementations: this https URL
paper
GNN, Social Media, Recommender, Polarization, Social Networks, Societal Well-Being
English
RecSoGood 2024: First International Workshop on Recommender Systems for Sustainability and Social Good co-located with RecSys 2024 The 18th ACM Recommender Systems Conference - October 14-18, 2024
2024
2024
https://recsogood.github.io/recsogood24/program.html
open
Guidotti, S., Donabauer, G., Somazzi, S., Kruschwitz, U., Taibi, D., Ognibene, D. (2024). Modeling Social Media Recommendation Impacts Using Academic Networks: A Graph Neural Network Approach (SHORT paper). Intervento presentato a: RecSoGood 2024: First International Workshop on Recommender Systems for Sustainability and Social Good co-located with RecSys 2024 The 18th ACM Recommender Systems Conference - October 14-18, 2024, Bari, Italy [10.48550/arXiv.2410.04552].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/533844
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