In this paper, we present a preliminary approach that uses a set of NLP and Deep Learning methods for extracting entities and relationships from research publications and then integrates them in a Knowledge Graph. More specifically, we (i) tackle the challenge of knowledge extraction by employing several state-of-the-art Natural Language Processing and Text Mining tools, (ii) describe an approach for integrating entities and relationships generated by these tools, and (iii) analyse an automatically generated Knowledge Graph including 10, 425 entities and 25, 655 relationships in the field of Semantic Web
Textbooks are written and organized in a way that facilitates learning and understanding. Sections l...
Natural language text, from messages on social media to articles in newspapers, constitutes a signif...
Knowledge graphs represent the meaning of properties of real-world entities and relationships among ...
In this paper, we present a preliminary approach that uses a set of NLP and Deep Learning methods fo...
Knowledge graphs (KG) are large networks of entities and relationships, typically expressed as RDF t...
The continuous growth of scientific literature brings innovations and, at the same time, raises new ...
Knowledge graphs (KG) are large network of entities and relationships, tipically expressed as RDF tr...
Science communication has a number of bottlenecks that include the rising number of published resear...
Knowledge bases built in the knowledge processing field have a problem in that experts have to add r...
We create a Knowledge Graph for Humanities research. Starting with a multidisciplinary dataset of 25...
The amount of scientific literature continuously grows, which poses an increasing challenge for rese...
Scientific knowledge has been traditionally disseminated and preserved through research articles pub...
Understanding the structure of a scientific domain and extracting specific information from it is la...
Context is widely considered for NLP and knowledge discovery since it highly influences the exact me...
In this paper, we propose a fully automated system to extend knowledge graphs using external informa...
Textbooks are written and organized in a way that facilitates learning and understanding. Sections l...
Natural language text, from messages on social media to articles in newspapers, constitutes a signif...
Knowledge graphs represent the meaning of properties of real-world entities and relationships among ...
In this paper, we present a preliminary approach that uses a set of NLP and Deep Learning methods fo...
Knowledge graphs (KG) are large networks of entities and relationships, typically expressed as RDF t...
The continuous growth of scientific literature brings innovations and, at the same time, raises new ...
Knowledge graphs (KG) are large network of entities and relationships, tipically expressed as RDF tr...
Science communication has a number of bottlenecks that include the rising number of published resear...
Knowledge bases built in the knowledge processing field have a problem in that experts have to add r...
We create a Knowledge Graph for Humanities research. Starting with a multidisciplinary dataset of 25...
The amount of scientific literature continuously grows, which poses an increasing challenge for rese...
Scientific knowledge has been traditionally disseminated and preserved through research articles pub...
Understanding the structure of a scientific domain and extracting specific information from it is la...
Context is widely considered for NLP and knowledge discovery since it highly influences the exact me...
In this paper, we propose a fully automated system to extend knowledge graphs using external informa...
Textbooks are written and organized in a way that facilitates learning and understanding. Sections l...
Natural language text, from messages on social media to articles in newspapers, constitutes a signif...
Knowledge graphs represent the meaning of properties of real-world entities and relationships among ...