Salatino, Angelo Classifying Research Papers with the Computer Science Ontology - ISWC 2018 Ontologies of research areas are important tools for characterising, exploring and analysing the research landscape. We recently released the Computer Science Ontology (CSO), a large-scale, automatically generated ontology of research areas, which includes about 26K topics and 226K semantic relationships. CSO currently powers several tools adopted by the Springer Nature editorial team and has been used to enable a variety of solutions, such as classifying research publications, detecting research communities, and predicting research trends. As an effort to encourage the usage of CSO, we have developed the CSO Portal, a web application that enables users to download, explore, and provide granular feedbacks at different levels of the ontology. In this paper, we present the CSO Classifier, an application for automatically classifying academic papers according olarly DataOntology Learning, Bibliographic Data, Scholarly Ontologies, Text Mining, Topic Detection<div><div><div><div><div><a></a></div></div></div></div></div> to the rich taxonomy of topics from CSO. The aim is to facilitate the adoption of CSO across the various communities engaged with scholarly data and to foster the development of new applications based on this knowledge base. Scholarly Data;Ontology Learning;Bibliographic Data;topic detection methods;Applied Computer Science 2018-10-22
    https://ordo.open.ac.uk/articles/poster/Classifying_Research_Papers_with_the_Computer_Science_Ontology_-_ISWC_2018/7204814
10.21954/ou.rd.7204814.v1