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Ranking Authors in Digital Libraries

机译:数字图书馆中的作者

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摘要

Searching for people with expertise on a particular topic also known as expert search is a common task in digital libraries. Most models for this task use only documents as evidence for expertise while ranking people. In digital libraries, other sources of evidence are available such as a document's association with venues and citation links with other documents. We propose graph-based models that accommodate multiple sources of evidence in a PageRank-like algorithm for ranking experts. Our studies on two publicly-available datasets indicate that our model despite being general enough to be directly useful for ranking other types of objects performs on par with probabilistic models commonly used for expert ranking.
机译:在特定主题上搜索具有专业主题的人员,也称为专家搜索是数字图书馆中的常见任务。此任务的大多数模型仅使用文件作为专业知识的证据,同时排名人。在数字图书馆中,其他证据来源可以获得,例如文档与场馆和引文链接与其他文件的关联。我们提出了基于图形的模型,可容纳多种证据来源,以便为排名专家的PageRank样算法。我们对两个公开可用数据集的研究表明,我们的模型尽管必须足够一般,但对于排名其他类型的物体进行直接有用,而常用于专家排名的概率模型。

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