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May Social Behavior Reveal Preferences on Different Contexts? Recommending Movie Titles Based on Tweets

机译:社会行为是否可以揭示不同背景下的偏好?根据推文推荐电影标题

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Recommendation systems allow users to deal with information overload by generating personalized recommendations that guide them through the universe of available options. These systems have been successfully used for over a decade in various application domains. However, most recommendation techniques do not consider context, generating recommendations which do not consider user's daily generated information. The increasing use of social networks and microblogs has created a valuable source to extract information that might help improve the results of recommender systems. Specifically, microblogging messages may help on contextualized movie recommendation. In this paper, a hybrid recommender is proposed merging a collaborative filtering recommender with a content based recommender. The results confirm the usefulness of the proposed recommender, where the user's exchanged messages define a bias to insert context in the recommendations.
机译:推荐系统允许用户通过生成个性化推荐来应对信息超载,这些推荐会指导他们遍及所有可用选项。这些系统已经在各种应用领域中成功使用了十多年。但是,大多数推荐技术不会考虑上下文,因此会生成不考虑用户每日生成的信息的推荐。社交网络和微博的日益使用为提取信息提供了宝贵的资源,这些信息可能有助于改善推荐系统的结果。具体来说,微博消息可能有助于情境电影推荐。在本文中,提出了一种混合推荐器,它将协作过滤推荐器与基于内容的推荐器合并在一起。结果证实了建议的推荐器的用途,其中用户交换的消息定义了在推荐中插入上下文的偏见。

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