Social network data to alleviate cold-start in recommender system: A systematic review |
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Authors: | Lesly Alejandra Gonzalez Camacho Solange Nice Alves-Souza |
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Institution: | Departamento de Engenharia de Computação e Sistemas Digitais, Escola Politécnica da Universidade de São Paulo (EPUSP), Av. Prof. Luciano Gualberto, Travessa 3, 158 - Butantã, São Paulo - SP, 05508-010, Brazil |
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Abstract: | Recommender Systems are currently highly relevant for helping users deal with the information overload they suffer from the large volume of data on the web, and automatically suggest the most appropriate items that meet users needs. However, in cases in which a user is new to Recommender System, the system cannot recommend items that are relevant to her/him because of lack of previous information about the user and/or the user-item rating history that helps to determine the users preferences. This problem is known as cold-start, which remains open because it does not have a final solution. Social networks have been employed as a good source of information to determine users preferences to mitigate the cold-start problem. This paper presents the results of a Systematic Literature Review on Collaborative Filtering-based Recommender System that uses social network data to mitigate the cold-start problem. This Systematic Literature Review compiled the papers published between 2011–2017, to select the most recent studies in the area. Each selected paper was evaluated and classified according to the depth which social networks used to mitigate the cold-start problem. The final results show that there are several publications that use the information of the social networks within the Recommender System; however, few research papers currently use this data to mitigate the cold-start problem. |
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Keywords: | Cold start Social network Collaborative filtering Recommender system Systematic literature review |
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