Back to Search Start Over

AI-KG: An Automatically Generated Knowledge Graph of Artificial Intelligence

Authors :
Pan, JZ
Tamma, V
d'Amato, C
Janowicz, K
Fu, B
Polleres, A
Seneviratne, O
Kagal, L
Dessì, D
Osborne, F
Reforgiato Recupero, D
Buscaldi, D
Motta, E
Dessì D
Osborne F
Reforgiato Recupero D
Buscaldi D
Motta E
Pan, JZ
Tamma, V
d'Amato, C
Janowicz, K
Fu, B
Polleres, A
Seneviratne, O
Kagal, L
Dessì, D
Osborne, F
Reforgiato Recupero, D
Buscaldi, D
Motta, E
Dessì D
Osborne F
Reforgiato Recupero D
Buscaldi D
Motta E
Publication Year :
2020

Abstract

Scientific knowledge has been traditionally disseminated and preserved through research articles published in journals, conference proceedings, and online archives. However, this article-centric paradigm has been often criticized for not allowing to automatically process, categorize, and reason on this knowledge. An alternative vision is to generate a semantically rich and interlinked description of the content of research publications. In this paper, we present the Artificial Intelligence Knowledge Graph (AI-KG), a large-scale automatically generated knowledge graph that describes 820K research entities. AI-KG includes about 14M RDF triples and 1.2M reified statements extracted from 333K research publications in the field of AI, and describes 5 types of entities (tasks, methods, metrics, materials, others) linked by 27 relations. AI-KG has been designed to support a variety of intelligent services for analyzing and making sense of research dynamics, supporting researchers in their daily job, and helping to inform decision-making in funding bodies and research policymakers. AI-KG has been generated by applying an automatic pipeline that extracts entities and relationships using three tools: DyGIE++, Stanford CoreNLP, and the CSO Classifier. It then integrates and filters the resulting triples using a combination of deep learning and semantic technologies in order to produce a high-quality knowledge graph. This pipeline was evaluated on a manually crafted gold standard, yielding competitive results. AI-KG is available under CC BY 4.0 and can be downloaded as a dump or queried via a SPARQL endpoint.

Details

Database :
OAIster
Notes :
English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1334332251
Document Type :
Electronic Resource