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Routing of Queries in Social Information Retrieval Using Latent and Explicit Semantic Cues

机译:使用隐性和显式语义线索检索社会信息中的查询路由

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Social Information Retrieval can be interpreted as querying the private information spaces of others within one's social network. One of the crucial steps in such a search approach is to identify the set of potential information providers to route the query to. In this experiment, we compare various routing mechanisms based on topic models (Latent Dirichlet Allocation, LDA), Explicit Semantic Analysis (ESA), and traditional metrics like Term Frequency (TF) and Term Frequency-Inverse Document Frequency (TF-IDF) to identify expertise using a publicly available data collection with 1, 400 scientific abstracts including author information, queries, and relevance judgments. The abstracts are interpreted as knowledge profile in a social information retrieval scenario. Our results suggest that both LDA and ESA can solve the routing problem, whereas the LDA-based approach and a new ESA approach considering links between semantic concepts perform best on the tested dataset.
机译:社交信息检索可以解释为查询一个人的社交网络中其他人的私人信息空间。这种搜索方法中的关键步骤之一就是确定将查询路由到的一组潜在信息提供者。在此实验中,我们比较了基于主题模型(潜在狄利克雷分配,LDA),显式语义分析(ESA)和术语频率(TF)和术语频率反文档频率(TF-IDF)的传统度量的各种路由机制,使用公开数据收集的1400种科学摘要来识别专业知识,包括作者信息,查询和相关性判断。在社会信息检索场景中,摘要被解释为知识配置文件。我们的结果表明,LDA和ESA都可以解决路由问题,而基于LDA的方法和考虑语义概念之间链接的新ESA方法在测试数据集上的效果最佳。

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