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Who is Talking about What: Social Map-based Recommendation for Content-Centric Social Websites

机译:谁在谈论内容以内容为中心的社交网站的基于社会地图的建议

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Content-centric social websites, such as discussion forums and blog sites, have flourished during the past several years. These sites often contain overwhelming amounts of information that are also being updated rapidly. To help users locate their interests at such sites (e.g., interesting blogs to read or discussion forums to join), researchers have developed a number of recommendation technologies. However, it is difficult to make effective recommendations for new users (a.k.a. the cold start problem) due to a lack of user information (e.g., preferences and interests). Furthermore, the complexity of recommendation algorithms often prevents users from comprehending let alone trusting the recommended results. To tackle the above two challenges, we are building a social map-based recommender system called Pharos. A social map summarizes users' content-related social behavior over time (e.g., reading, writing, and commenting behavior during the past week) as a set of latent communities. Each community is characterized by the theme of the content being discussed and the key people involved. By discovering, ranking, and displaying the most "popular" latent communities, Pharos creates a visual social map of a website. This enables new users to obtain a quick overview of the site, alleviating the cold start problem. Furthermore, we use the social map as a context to help explain Pharos-recommended content and people. Users can also interactively explore the social map to locate their interested content or people that are not being explicitly recommended, compensating for the imperfection in the recommendation algorithms. We have deployed Pharos within our company and our preliminary evaluation shows the usefulness of Pharos.
机译:以内容为中心的社交网站,例如讨论论坛和博客网站,在过去几年中蓬勃发展。这些网站通常包含迅速更新的压倒性的信息。为了帮助用户在此类网站上找到兴趣(例如,有趣的博客阅读或讨论论坛加入),研究人员开发了许多推荐技术。但是,由于缺乏用户信息(例如,偏好和兴趣),难以为新用户(A.K.A.)为新用户提供有效的建议。此外,推荐算法的复杂性通常会阻止用户理解,更不用说相信推荐的结果。为了解决上述两个挑战,我们正在构建一个名为Pharos的社交地图的推荐系统。社会地图总结了用户的内容相关的社会行为随着时间的推移(例如,在过去一周内阅读,写作和评论行为)作为一系列潜在社区。每个社区的特点是所讨论的内容的主题和所涉及的关键人物。通过发现,排名和展示最“流行的”潜在社区,Pharos创建了一个网站的视觉社交地图。这使新用户能够快速获取该网站的概述,减轻了冷启动问题。此外,我们将社交地图作为背景,以帮助解释法律顾问推荐的内容和人。用户还可以互动地探索社交地图,找到他们感兴趣的内容或未明确建议的人,弥补了推荐算法中的不完美。我们在公司内部部署了法兰科斯州,我们的初步评估显示了法兰斯的有用性。

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