Social media recommendation differs from traditional recommendation approaches as it needs considering not only the content information and users' similarities, but also users' social relationships and behavior within an online social network as well. In this article, a recommender system – designed for big data applications – is used for providing useful recommendations in online social networks. The proposed technique represents a collaborative and user-centered approach that exploits the interactions among users and generated multimedia contents in one or more social networks in a novel and effective way. The experiments performed on data collected from several online social networks show the feasibility of the approach towards the social media recommendation problem.

A Social Media Recommender System / Sperlì, Giancarlo; Amato, Flora; Mercorio, Fabio; Mezzanzanica, Mario; Moscato, Vincenzo; Picariello, Antonio. - In: INTERNATIONAL JOURNAL OF MULTIMEDIA DATA ENGINEERING & MANAGEMENT. - ISSN 1947-8534. - 9:1(2018), pp. 36-50. [10.4018/IJMDEM.2018010103]

A Social Media Recommender System

Giancarlo Sperlì;Flora Amato;Vincenzo Moscato;Antonio Picariello
2018

Abstract

Social media recommendation differs from traditional recommendation approaches as it needs considering not only the content information and users' similarities, but also users' social relationships and behavior within an online social network as well. In this article, a recommender system – designed for big data applications – is used for providing useful recommendations in online social networks. The proposed technique represents a collaborative and user-centered approach that exploits the interactions among users and generated multimedia contents in one or more social networks in a novel and effective way. The experiments performed on data collected from several online social networks show the feasibility of the approach towards the social media recommendation problem.
2018
A Social Media Recommender System / Sperlì, Giancarlo; Amato, Flora; Mercorio, Fabio; Mezzanzanica, Mario; Moscato, Vincenzo; Picariello, Antonio. - In: INTERNATIONAL JOURNAL OF MULTIMEDIA DATA ENGINEERING & MANAGEMENT. - ISSN 1947-8534. - 9:1(2018), pp. 36-50. [10.4018/IJMDEM.2018010103]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11588/707671
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