基于事件的社交网络中的情境感知事件推荐

A. Q. Macedo, L. Marinho, Rodrygo L. T. Santos
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引用次数: 190

摘要

网络已经成长为当今交流社会事件的最重要的渠道之一。然而,在基于事件的社交网络(EBSNs)中,大量可用的事件往往削弱了用户选择最符合他们兴趣的事件的能力。推荐系统似乎是这个问题的自然解决方案,但与经典的推荐场景(例如电影,书籍)不同,事件推荐问题本质上是冷启动的。事实上,在ebsn中发布的事件通常是短暂的,并且根据定义,总是在未来,很少或没有历史出席的痕迹。为了克服这一限制,我们建议利用几种可从ebsn获得的上下文信号。除了基于事件描述的内容信号和基于用户rsvp的协作信号外,我们还利用了基于群组成员关系的社交信号、基于用户地理偏好的位置信号和基于用户时间偏好的时间信号。此外,我们将提出的学习信号结合起来对事件进行排序,以进行个性化推荐。在Meetup.com上进行的大量实验表明,与文献中最先进的事件推荐相比,我们提出的上下文学习方法是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Context-Aware Event Recommendation in Event-based Social Networks
The Web has grown into one of the most important channels to communicate social events nowadays. However, the sheer volume of events available in event-based social networks (EBSNs) often undermines the users' ability to choose the events that best fit their interests. Recommender systems appear as a natural solution for this problem, but differently from classic recommendation scenarios (e.g. movies, books), the event recommendation problem is intrinsically cold-start. Indeed, events published in EBSNs are typically short-lived and, by definition, are always in the future, having little or no trace of historical attendance. To overcome this limitation, we propose to exploit several contextual signals available from EBSNs. In particular, besides content-based signals based on the events' description and collaborative signals derived from users' RSVPs, we exploit social signals based on group memberships, location signals based on the users' geographical preferences, and temporal signals derived from the users' time preferences. Moreover, we combine the proposed signals for learning to rank events for personalized recommendation. Thorough experiments using a large crawl of Meetup.com demonstrate the effectiveness of our proposed contextual learning approach in contrast to state-of-the-art event recommenders from the literature.
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