Enhancing Personalized Document Ranking using Social Information

Nawal Ould Amer
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Abstract

1. RESEARCH OVERVIEW Social networks (like Facebook and MySpace), collaborative bookmarking systems (like Bibsonomy, Delicious, and CiteULike) and Microblog systems like twitter, offer services such as sharing, commenting, tagging, publishing, rating, retweeting and discussing, that make users increasingly active. Hence, users are more and more connected. Given the tremendous amount of information, witch is generated by these platforms, there is a need to an Information Retrieval (IR) system to automatically answer user’s queries. However, IR system, in this case should take into account additional criteria, such as user’s social networks, user’s interests, user’s preferences, etc. In other words, the classical IR systems should be personalized. In personalized information retrieval, the search process considers a user’s model that covers user’s interest, behavior and history. Commonly, users models are build trough user’s query logs [10], user’s posts (such as tweets, blogs and comments) [15], user’s tags and bookmarking [1, 12, 16]. Consequently, a user is represented by a profile. The user profile is then used in IR system in two main scenarios, “query expansion” [3, 4, 7], or document “re-ranking”[6, 8, 9,
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利用社会信息增强个性化文档排名
1. 社交网络(如Facebook和MySpace)、协作书签系统(如Bibsonomy、Delicious和CiteULike)和微博系统(如twitter)提供分享、评论、标记、发布、评级、转发和讨论等服务,使用户越来越活跃。因此,用户之间的联系越来越紧密。由于这些平台产生了大量的信息,因此需要一个信息检索(information Retrieval, IR)系统来自动回答用户的查询。然而,在这种情况下,IR系统应该考虑到额外的标准,如用户的社交网络,用户的兴趣,用户的偏好等。换句话说,经典红外系统应该个性化。在个性化信息检索中,搜索过程考虑用户的模型,该模型涵盖了用户的兴趣、行为和历史。通常,用户模型是通过用户的查询日志[10]、用户的帖子(如tweets、blog和评论)[15]、用户的标签和书签[1,12,16]来构建的。因此,用户由概要文件表示。然后将用户配置文件用于IR系统中的两种主要场景,“查询扩展”[3,4,7]或文档“重新排序”[6,8,9]。
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