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Enhancing citation recommendation with various evidences

机译:通过各种证据增强引文推荐

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摘要

With the tremendous amount of citations available in digital library, how to suggest citations automatically, to meet the information needs of researchers has become an important problem. In this paper, we propose a model which treats citation recommendation as a special retrieval task to address this challenge. First, users provide a target paper with some metadata to our system. Second, the system retrieves a relevant candidate citation set. Then the candidate citations are reranked by well-chosen citation evidence, such as publication time preference, self-citation preference, co-citation preference and publication reputation preference. Especially, various measures are introduced to integrate the evidence. We experimented with the proposed model on an established bibliographic corpus-ACL Anthology Network, the results show that the model is valuable in practice, and citation recommendation can be significantly improved using proposed evidences.
机译:随着数字图书馆中大量引用文献的出现,如何自动建议引用文献以满足研究人员的信息需求已成为一个重要的问题。在本文中,我们提出了一个模型,该模型将引文推荐作为一种特殊的检索任务来解决这一挑战。首先,用户向目标文件提供了一些元数据到我们的系统。其次,系统检索相关的候选引文集。然后,通过精心选择的引用证据对候选引用进行排序,例如发布时间偏好,自我引用偏好,共同引用偏好和出版物声誉偏好。特别是,引入了各种措施来整合证据。我们在已建立的书目语料库-ACL选集网络上对提出的模型进行了实验,结果表明该模型在实践中很有价值,可以使用提出的证据显着改善引文推荐。

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