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Social Media Recommendation based on People and Tags

机译:基于人员和标签的社交媒体推荐

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摘要

We study personalized item recommendation within an enterprise social media application suite that includes blogs, bookmarks, communities, wikis, and shared files. Recommendations are based on two of the core elements of social mediapeople and tags. Relationship information among people, tags, and items, is collected and aggregated across different sources within the enterprise. Based on these aggregated relationships, the system recommends items related to people and tags that are related to the user. Each recommended item is accompanied by an explanation that includes the people and tags that led to its recommendation, as well as their relationships with the user and the item. We evaluated our recommender system through an extensive user study. Results show a significantly better interest ratio for the tag-based recommender than for the people-based recommender, and an even better performance for a combined recommender. Tags applied on the user by other people are found to be highly effective in representing that user's topics of interest.
机译:我们在企业社交媒体应用程序套件中研究个性化项目推荐,包括博客,书签,社区,维基和共享文件。建议基于社交媒体和标签的两个核心要素。在企业内的不同来源中收集和聚合人员,标签和项目之间的关系信息。基于这些聚合关系,系统建议与与用户相关的人和标签相关的项目。每个推荐的项目都附有一个解释,其中包括导致其推荐的人员和标签以及与用户和项目的关系。我们通过广泛的用户学习评估我们的推荐系统。结果显示了基于标签的推荐人的显着更好的息息比,而不是基于人的推荐人以及组合推荐的更好的性能。在用户上应用于用户的标签是非常有效的,代表用户的兴趣主题。

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