Publication | Open Access
Improving Access to Scientific Literature with Knowledge Graphs
71
Citations
6
References
2020
Year
EngineeringKnowledge ExtractionBibliometricsScholarly Knowledge GraphSemantic WebText MiningKnowledge Graph EmbeddingsInformation RetrievalData ScienceNew Research ContributionsData IntegrationKnowledge RepresentationKnowledge DiscoveryKnowledge GraphsCitation GraphSemantic NetworkScientific LiteratureKnowledge BaseBusinessKnowledge ManagementSemantic Graph
Abstract The transfer of knowledge has not changed fundamentally for many hundreds of years: It is usually document-based-formerly printed on paper as a classic essay and nowadays as PDF. With around 2.5 million new research contributions every year, researchers drown in a flood of pseudo-digitized PDF publications. As a result research is seriously weakened. In this article, we argue for representing scholarly contributions in a structured and semantic way as a knowledge graph. The advantage is that information represented in a knowledge graph is readable by machines and humans. As an example, we give an overview on the Open Research Knowledge Graph (ORKG), a service implementing this approach. For creating the knowledge graph representation, we rely on a mixture of manual (crowd/expert sourcing) and (semi-)automated techniques. Only with such a combination of human and machine intelligence, we can achieve the required quality of the representation to allow for novel exploration and assistance services for researchers. As a result, a scholarly knowledge graph such as the ORKG can be used to give a condensed overview on the state-of-the-art addressing a particular research quest, for example as a tabular comparison of contributions according to various characteristics of the approaches. Further possible intuitive access interfaces to such scholarly knowledge graphs include domain-specific (chart) visualizations or answering of natural language questions.
| Year | Citations | |
|---|---|---|
Page 1
Page 1