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Factoring Personalization in Social Media Recommendations

机译:在社交媒体推荐中考虑个性化

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Nowadays, since social media sites and online social networks have created big media data, it is thus complex and time-consuming for users to find the preferred social media from a large media catalog. Social media recommender systems are therefore emerged to recommend personalized media objects. However, most media recommender systems only focus on one aspect of social media. It is lacking a big picture of how to build an effective social media recommender system. Therefore, this paper tackles this challenge first for specifying the distinct features of media object that can be used for recommender systems, and then discusses five critical aspects that can affect the design of social media recommender systems. This paper further indicates how to assemble these critical aspects and concludes that when we apply traditional recommender algorithms in the media context, those are the critical aspects to improve and optimize social media recommneder systems.
机译:如今,由于社交媒体站点和在线社交网络已经创建了大型媒体数据,因此,用户从大型媒体目录中查找首选社交媒体变得既复杂又耗时。因此,出现了社交媒体推荐器系统来推荐个性化媒体对象。但是,大多数媒体推荐系统仅关注社交媒体的一个方面。它缺乏如何建立有效的社交媒体推荐系统的全景图。因此,本文首先针对指定可用于推荐器系统的媒体对象的独特功能解决了这一挑战,然后讨论了可能影响社交媒体推荐器系统设计的五个关键方面。本文进一步指出了如何组合这些关键方面,并得出结论,当我们在媒体环境中应用传统推荐程序算法时,这些是改进和优化社交媒体推荐系统的关键方面。

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