The CSO Classifier: Ontology-Driven Detection of Research Topics in Scholarly Articles

DIGITAL LIBRARIES FOR OPEN KNOWLEDGE, TPDL 2019(2021)

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摘要
Classifying research papers according to their research topics is an important task to improve their retrievability, assist the creation of smart analytics, and support a variety of approaches for analysing and making sense of the research environment. In this paper, we present the CSO Classifier, a new unsupervised approach for automatically classifying research papers according to the Computer Science Ontology (CSO), a comprehensive ontology of re-search areas in the field of Computer Science. The CSO Classifier takes as input the metadata associated with a research paper (title, abstract, keywords) and returns a selection of research concepts drawn from the ontology. The approach was evaluated on a gold standard of manually annotated articles yielding a significant improvement over alternative methods.
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关键词
Scholarly data, Digital libraries, Bibliographic data, Ontology, Text mining, Topic detection, Word embeddings, Science of science
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