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Evaluation of Features for Author Name Disambiguation Using Linear Support Vector Machines

机译:使用线性支持向量机评估作者名称歧义的功能

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Author name disambiguation allows to distinguish between two or more authors sharing the same name. In a previous paper, we have proposed a name disambiguation framework in which for each author name in each article we build a context consisting of classification codes, bibliographic references, co-authors, etc. Then, by pair wise comparison of contexts, we have been grouping contributions likely referring to the same people. In this paper we examine which elements of the context are most effective in author name disambiguation. We employ linear Support Vector Machines (SVM) to find the most influential features.
机译:作者姓名歧义允许区分两个或更多作者共享同名。 在上一篇论文中,我们提出了一个名称消歧框架,其中每篇文章中的每个作者名称我们建立一个由分类代码,书目参考文献,共同作者等的上下文。然后,我们有了一对明智的上下文比较,我们有 一直在分组可能指的是同一个人的贡献。 在本文中,我们检查了上下文的哪些元素在作者名称歧义中最有效。 我们采用线性支持向量机(SVM)以找到最有影响力的功能。

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