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Social network data to alleviate cold-start in recommender system: A systematic review

机译:社交网络数据缓解推荐系统中的冷启动:系统回顾

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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.
机译:推荐系统当前与帮助用户处理因网络上的大量数据而遭受的信息过载有关,并自动建议满足用户需求的最合适的项目。但是,在用户不熟悉推荐系统的情况下,由于缺少有关用户的先前信息和/或有助于确定用户的用户项目评分历史记录,系统无法推荐与她/他有关的项目偏好。这个问题称为冷启动,由于没有最终解决方案,因此一直保持打开状态。社交网络已被用作确定用户偏好以缓解冷启动问题的良好信息来源。本文介绍了有关基于协作筛选的推荐系统的系统文献综述的结果,该系统使用社交网络数据缓解了冷启动问题。该系统文献综述汇编了2011-2017年间发表的论文,以选择该地区的最新研究。根据社会网络用来缓解冷启动问题的深度,对每篇论文进行评估和分类。最终结果表明,有几本出版物使用了推荐系统中的社交网络信息。但是,目前很少有研究论文使用该数据来缓解冷启动问题。

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