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CollabSeer: A Search Engine for Collaboration Discovery

机译:Collabseer:用于协作发现的搜索引擎

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Collaborative research has been increasingly popular and important in academic circles. However, there is no open platform available for scholars or scientists to effectively discover potential collaborators. This paper discusses CollabSeer, an open system to recommend potential research collaborators for scholars and scientists. CollabSeer discovers collaborators based on. the structure of the coauthor network and a user's research interests. Currently, three different network structure analysis methods that use vertex similarity are supported in CollabSeer: Jaccard similarity, cosine similarity, and our relation strength similarity measure. Users can also request a recommendation by selecting a topic of interest. The topic of interest list is determined by CollabSeer's lexical analysis module, which analyzes the key phrases of previous publications. The CollabSeer system is highly modularized making it easy to add or replace the network analysis module or users' topic of interest analysis module. CollabSeer integrates the results of the two modules to recommend collaborators to users. Initial experimental results over the a subset of the CiteSeerX database shows that CollabSeer can efficiently discover prospective collaborators.
机译:协同研究在学术界越来越受欢迎和重要。但是,没有公开平台可用于学者或科学家有效地发现潜在的合作者。本文讨论了合作者,一个开放式系统,为学者和科学家推荐潜在的研究合作者。 Collabseer发现了基于的合作者。共同奉献网络的结构和用户的研究兴趣。目前,Collabseer支持使用顶点相似性的三种不同的网络结构分析方法:Jaccard相似性,余弦相似度和我们的关系强度相似度措施。用户还可以通过选择感兴趣的主题来申请建议。感兴趣列表的主题由Collabseer的词汇分析模块决定,该模块分析了以前出版物的关键短语。 COLLABSEER系统高度模块化,使得易于添加或更换兴趣分析模块的网络分析模块或用户主题。 COLLABSEER将两个模块的结果集成,以向用户推荐合作者。初始实验结果对CITESEERX数据库的一个子集显示,COLLABSEER可以有效地发现潜在的合作者。

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