Characterizing User Archetypes and Discussions on Scored.co
- URL: http://arxiv.org/abs/2407.21753v2
- Date: Fri, 22 Nov 2024 16:39:04 GMT
- Title: Characterizing User Archetypes and Discussions on Scored.co
- Authors: Andrea Failla, Salvatore Citraro, Giulio Rossetti, Francesco Cauteruccio,
- Abstract summary: We present a framework for characterizing nodes and hyperedges in social hypernetworks.
We focus on the understudied alt-right platform Scored.co.
Our findings highlight the importance of higher-order interactions in understanding social dynamics.
- Score: 0.6321194486116923
- License:
- Abstract: In recent years, the proliferation of social platforms has drastically transformed the way individuals interact, organize, and share information. In this scenario, we experience an unprecedented increase in the scale and complexity of interactions and, at the same time, little to no research about some fringe social platforms. In this paper, we present a multi-dimensional framework for characterizing nodes and hyperedges in social hypernetworks, with a focus on the understudied alt-right platform Scored.co. Our approach integrates the possibility of studying higher-order interactions, thanks to the hypernetwork representation, and various node features such as user activity, sentiment, and toxicity, with the aim to define distinct user archetypes and understand their roles within the network. Utilizing a comprehensive dataset from Scored.co, we analyze the dynamics of these archetypes over time and explore their interactions and influence within the community. The framework's versatility allows for detailed analysis of both individual user behaviors and broader social structures. Our findings highlight the importance of higher-order interactions in understanding social dynamics, offering new insights into the roles and behaviors that emerge in complex online environments.
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