Knowledge Graphs

Created by MG96

External Public cs.AI cs.DB cs.LG

Statistics

Citations
1463
References
483
Last updated
Loading...
Authors

Aidan Hogan Eva Blomqvist Michael Cochez Claudia d'Amato Gerard de Melo Claudio Gutierrez José Emilio Labra Gayo Sabrina Kirrane Sebastian Neumaier Axel Polleres Roberto Navigli Axel-Cyrille Ngonga Ngomo Sabbir M. Rashid Anisa Rula Lukas Schmelzeisen Juan Sequeda Steffen Staab Antoine Zimmermann
Project Resources

Name Type Source Actions
ArXiv Paper Paper arXiv
Semantic Scholar Paper Semantic Scholar
GitHub Repository Code Repository GitHub
Abstract

In this paper we provide a comprehensive introduction to knowledge graphs, which have recently garnered significant attention from both industry and academia in scenarios that require exploiting diverse, dynamic, large-scale collections of data. After some opening remarks, we motivate and contrast various graph-based data models and query languages that are used for knowledge graphs. We discuss the roles of schema, identity, and context in knowledge graphs. We explain how knowledge can be represented and extracted using a combination of deductive and inductive techniques. We summarise methods for the creation, enrichment, quality assessment, refinement, and publication of knowledge graphs. We provide an overview of prominent open knowledge graphs and enterprise knowledge graphs, their applications, and how they use the aforementioned techniques. We conclude with high-level future research directions for knowledge graphs.

Note:

No note available for this project.

No note available for this project.
Contact:

No contact available for this project.

No contact available for this project.