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Automatic Hierarchical Categorization of Research Expertise Using Minimum Information

机译:使用最低信息自动分层分类研究专业知识

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Throughout the history of science, different knowledge areas have collaborated to overcome major research challenges. The task of associating a researcher with such areas makes a series of tasks feasible such as the organization of digital repositories, expertise recommendation and the formation of research groups for complex problems. In this paper we propose a simple yet effective automatic classification model that is capable of categorizing research expertise according to a hierarchical knowledge area classification scheme. Our proposal relies on discriminative evidence provided by the title of academic works, which is the minimum information capable of relating a researcher to its knowledge area. We also evaluate the use of learning-to-rank as an effective mean to rank experts with minimum information. Our experiments show that using supervised machine learning methods trained with manually labeled information, it is possible to produce effective classification and ranking models.
机译:在整个科学史上,不同的知识领域合作克服了重大研究挑战。将研究人员与这些领域联系起来的任务使得一系列任务可行,例如数字存储库的组织,专业知识建议和复杂问题的研究群体的形成。在本文中,我们提出了一种简单但有效的自动分类模型,能够根据分层知识区域分类方案对研究专业知识进行分类。我们的提案依赖于学术作品标题提供的歧视证据,这是能够将研究人员与其知识领域联系起来的最低信息。我们还评估使用学习排名作为秩序依赖于最低信息等级专家。我们的实验表明,使用通过手动标记信息培训的监督机器学习方法,可以生产有效的分类和排名模型。

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