Social network analysis is an interdisciplinary topic attracting researchers from biology, economics, psychology, and machine learning, with an existing long history based on graph theory. It has since attracted interests from both the research and business communities for a strong potential and variety of applications. In addition, this interest has been fueled by the large success of online social networking sites and the subsequent abundance of social network data produced. An important aspect in this research field is influence maximization in social networks. The goal is to find a set of individuals to be targeted with the aim to drive social contagion and generate a diffusion cascade. We provide here an overview of the models and approaches used to analyze social networks. In this context, we also discuss data preparation and privacy concerns. We further describe different kind of approaches based on centrality measures, which express a sociological interpretation of the data, and stochastic influence and information propagation techniques, which aim at modeling the underlying diffusion processes that govern social interactions.

Social network data analysis and mining applications for the Internet of Data / Cuomo, Salvatore; Maiorano, Francesco. - In: CONCURRENCY AND COMPUTATION. - ISSN 1532-0626. - 30:15(2018), p. e4527. [10.1002/cpe.4527]

Social network data analysis and mining applications for the Internet of Data

Cuomo, Salvatore
;
2018

Abstract

Social network analysis is an interdisciplinary topic attracting researchers from biology, economics, psychology, and machine learning, with an existing long history based on graph theory. It has since attracted interests from both the research and business communities for a strong potential and variety of applications. In addition, this interest has been fueled by the large success of online social networking sites and the subsequent abundance of social network data produced. An important aspect in this research field is influence maximization in social networks. The goal is to find a set of individuals to be targeted with the aim to drive social contagion and generate a diffusion cascade. We provide here an overview of the models and approaches used to analyze social networks. In this context, we also discuss data preparation and privacy concerns. We further describe different kind of approaches based on centrality measures, which express a sociological interpretation of the data, and stochastic influence and information propagation techniques, which aim at modeling the underlying diffusion processes that govern social interactions.
2018
Social network data analysis and mining applications for the Internet of Data / Cuomo, Salvatore; Maiorano, Francesco. - In: CONCURRENCY AND COMPUTATION. - ISSN 1532-0626. - 30:15(2018), p. e4527. [10.1002/cpe.4527]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11588/728295
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