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首页> 外文期刊>ACM Transactions on Interactive Intelligent Systems >Agents Vs. Users: Visual Recommendation of Research Talks with Multiple Dimension of Relevance
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Agents Vs. Users: Visual Recommendation of Research Talks with Multiple Dimension of Relevance

机译:特工vs.用户:具有多重相关性的研究演讲的视觉推荐

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Several approaches have been researched to help people deal with abundance of information. An important feature pioneered by social tagging systems and later used in other kinds of social systems is the ability to explore different community relevance prospects by examining items bookmarked by a specific user or items associated by various users with a specific tag. A ranked list of recommended items offered by a specific recom-mender engine can be considered as another relevance prospect. The problem that we address is that existing personalized social systems do not allow their users to explore and combine multiple relevance prospects. Only one prospect can be explored at any given time-a list of recommended items, a list of items bookmarked by a specific user, or a list of items marked with a specific tag. In this article, we explore the notion of combining multiple relevance prospects as a way to increase effectiveness and trust. We used a visual approach to recommend articles at a conference by explicitly presenting multiple dimensions of relevance. Suggestions offered by different recommendation techniques were embodied as recommender agents to put them on the same ground as users and tags. The results of two user studies performed at academic conferences allowed us to obtain interesting insights to enhance user interfaces of personalized social systems. More specifically, effectiveness and probability of item selection increase when users are able to explore and interrelate prospects of items relevance-that is, items bookmarked by users, recommendations and tags. Nevertheless, a less-technical audience may require guidance to understand the rationale of such intersections.
机译:研究了几种方法来帮助人们处理大量信息。社交标签系统率先使用并随后在其他类型的社交系统中使用的一个重要功能是能够通过检查由特定用户添加书签的项目或由具有特定标签的各个用户关联的项目来探索不同的社区相关性前景。由特定推荐引擎提供的推荐项目的排名列表可以视为另一个相关前景。我们要解决的问题是,现有的个性化社交系统不允许其用户探索和组合多个相关前景。在任何给定时间只能浏览一个潜在客户-推荐项目列表,特定用户添加书签的项目列表或标有特定标签的项目列表。在本文中,我们探讨了将多个相关前景组合在一起以增加有效性和信任度的方法。通过显式呈现相关性的多个维度,我们使用视觉方法在会议上推荐文章。不同推荐技术提供的建议被体现为推荐代理,以使其与用户和标签具有相同的基础。在学术会议上进行的两次用户研究的结果使我们获得了有趣的见解,以增强个性化社交系统的用户界面。更具体地说,当用户能够探索和关联项目相关性的前景(即,由用户,建议和标签添加书签的项目)时,项目选择的有效性和可能性会增加。但是,技术含量较低的观众可能需要指导以了解此类交叉口的原理。

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