Despite improved digital access to scholarly knowledge in recent decades, scholarly communication remains exclusively document-based. The document-oriented workflows in science publication have reached the limits of adequacy as highlighted by recent discussions on the increasing proliferation of scientific literature, the deficiency of peer-review and the reproducibility crisis. In this form, scientific knowledge remains locked in representations that are inadequate for machine processing. As long as scholarly communication remains in this form, we cannot take advantage of all the advancements taking place in machine learning and natural language processing techniques. Such techniques would facilitate the transformation from pure text b...
The past decades have witnessed a huge growth in scholarly information published on the Web, mostly ...
Despite improved digital access to scholarly literature in the last decades, the fundamental princip...
In this paper, we present a preliminary approach that uses a set of NLP and Deep Learning methods fo...
The transfer of knowledge has not changed fundamentally for many hundreds of years: It is usually do...
The transfer of knowledge has not changed fundamentally for many hundreds of years: It is usually do...
The continuous growth of scientific literature brings innovations and, at the same time, raises new ...
The document-oriented workflows in science have reached (or already exceeded) the limits of adequacy...
Knowledge graphs facilitate the discovery of information by organizing it into entities and describi...
For centuries, scholarly knowledge has been buried in documents. While articles are great to convey ...
The document-centric workflows in science have reached (or already exceeded) the limits of adequacy....
The ever-increasing number of published scholarly articles imposes significant challenges in organiz...
Nowadays, scientific articles are mostly published as PDF files containing unstructured and semi-str...
The concept of knowledge graphs is introduced as a method to represent the state of the art in a spe...
Knowledge graphs have seen wide adoption, in large part owing to their schemaless nature that enable...
A scientific paper can be divided into two major constructs which are Metadata and Full-body text. M...
The past decades have witnessed a huge growth in scholarly information published on the Web, mostly ...
Despite improved digital access to scholarly literature in the last decades, the fundamental princip...
In this paper, we present a preliminary approach that uses a set of NLP and Deep Learning methods fo...
The transfer of knowledge has not changed fundamentally for many hundreds of years: It is usually do...
The transfer of knowledge has not changed fundamentally for many hundreds of years: It is usually do...
The continuous growth of scientific literature brings innovations and, at the same time, raises new ...
The document-oriented workflows in science have reached (or already exceeded) the limits of adequacy...
Knowledge graphs facilitate the discovery of information by organizing it into entities and describi...
For centuries, scholarly knowledge has been buried in documents. While articles are great to convey ...
The document-centric workflows in science have reached (or already exceeded) the limits of adequacy....
The ever-increasing number of published scholarly articles imposes significant challenges in organiz...
Nowadays, scientific articles are mostly published as PDF files containing unstructured and semi-str...
The concept of knowledge graphs is introduced as a method to represent the state of the art in a spe...
Knowledge graphs have seen wide adoption, in large part owing to their schemaless nature that enable...
A scientific paper can be divided into two major constructs which are Metadata and Full-body text. M...
The past decades have witnessed a huge growth in scholarly information published on the Web, mostly ...
Despite improved digital access to scholarly literature in the last decades, the fundamental princip...
In this paper, we present a preliminary approach that uses a set of NLP and Deep Learning methods fo...