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Collaborative Future Event Recommendation

机译:协作未来事件推荐

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We demonstrate a method for collaborative ranking of future events. Previous work on recommender systems typically relies on feedback on a particular item, such as a movie, and generalizes this to other items or other people. In contrast, we examine a setting where no feedback exists on the particular item. Because direct feedback does not exist for events that have not taken place, we recommend them based on individuals' preferences for past events, combined collabo-ratively with other peoples' likes and dislikes. We examine the topic of unseen item recommendation through a user study of academic (scientific) talk recommendation, where we aim to correctly estimate a ranking function for each user, predicting which talks would be of most interest to them. Then by decomposing user parameters into shared and individual dimensions, we induce a similarity metric between users based on the degree to which they share these dimensions. We show that the collaborative ranking predictions of future events are more effective than pure content-based recommendation. Finally, to further reduce the need for explicit user feedback, we suggest an active learning approach for eliciting feedback and a method for incorporating available implicit user cues.
机译:我们展示了一种用于协作未来事件的方法。以前的推荐系统的工作通常依赖于对特定项目的反馈,例如电影,并将其推广到其他项目或其他人。相比之下,我们检查特定项目上没有反馈的设置。因为直接反馈不会对尚未发生的事件存在,我们建议他们根据个人好恶对过去的事件,结合collabo-ratively与其他人的喜好。我们通过学术(科学)谈的建议,我们的目标是正确估计排名功能为每个用户,预测哪些会谈将是最感兴趣的人的用户研究考察看不见的项目推荐的话题。然后通过将用户参数分解成共享和各个维度,我们基于它们共享这些维度的程度诱导用户之间的相似度量。我们表明,未来事件的协同排名预测比基于纯净的内容的推荐更有效。最后,为了进一步减少对明确用户反馈的需求,我们建议一种用于引出反馈的主动学习方法以及用于结合可用隐式用户提示的方法。

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