Interests Diffusion in Social Networks
Gregorio D'Agostino, Fulvio D'Antonio, Antonio De Nicola, Salvatore, Tucci

TL;DR
This paper introduces a hybrid framework combining complexity science and semantic web techniques to analyze and predict how individual interests propagate within social networks, demonstrated on the computer science research community.
Contribution
It presents a novel integrated approach for interest inference and evolution prediction in social networks, merging semantic analysis with interest propagation modeling.
Findings
Effective interest inference from social network data
Predictive model of interest propagation dynamics
Application to the computer science research community
Abstract
Understanding cultural phenomena on Social Networks (SNs) and exploiting the implicit knowledge about their members is attracting the interest of different research communities both from the academic and the business side. The community of complexity science is devoting significant efforts to define laws, models, and theories, which, based on acquired knowledge, are able to predict future observations (e.g. success of a product). In the mean time, the semantic web community aims at engineering a new generation of advanced services by defining constructs, models and methods, adding a semantic layer to SNs. In this context, a leapfrog is expected to come from a hybrid approach merging the disciplines above. Along this line, this work focuses on the propagation of individual interests in social networks. The proposed framework consists of the following main components: a method to gather…
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Taxonomy
TopicsComplex Network Analysis Techniques · Opinion Dynamics and Social Influence
