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A Personalized Graph-Based Document Ranking Model Using a Semantic User Profile

机译:使用语义用户配置文件的基于基于图的文档排名模型

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The overload of the information available on the web, held with the diversity of the user information needs and the ambiguity of their queries have led the researchers to develop personalized search tools that return only documents that meet the user profile representing his main interests and needs. We present in this paper a personalized document ranking model based on an extended graph-based distance measure that exploits a semantic user profile derived from a predefined web ontology (ODP). The measure is based on combining Minimum Common Supergraph (MCS) and Maximum Common Subgraph (mcs) between graphs representing respectively the document and the user profile. We extend this measure in order to take into account a semantic recovery between the document and the user profile through common concepts and cross links connecting the two graphs. Results show the effectiveness of our personalized graph-based ranking model compared to Yahoo1 search results.
机译:使用用户信息需求的多样性和查询的歧义的网络上可用的信息过载导致研究人员开发个性化的搜索工具,这些工具只返回满足其主要兴趣和需求的用户配置文件的文档。我们在本文中呈现了基于扩展的基于图形的距离测量的个性化文档排名模型,该测量利用从预定义的Web本体(ODP)派生的语义用户简档。该措施基于分别表示文档和用户简档的图表之间的最小公共超超图像和最大共同子图(MCS)。我们通过常见概念和连接两个图形的交叉链接来扩展该措施,以考虑文档和用户配置文件之间的语义恢复。结果表明,与Yahoo1搜索结果相比,我们的个性化图形排名模型的有效性。

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