Recently a huge number of knowledge graphs (KGs) has been generated, but there has not been enough attention to generate high-quality metadata to enable users to reuse the KGs for their own purposes. The main challenge is to generate standardized and high quality descriptive metadata which helps users understand the content of the large KGs. Some existing solutions make use of a combination of schema-level patterns derived from graph summarization with instance-level snippets. I will follow this trend and develop a method based on a combination of content-based patterns with user activity data such as SPARQL query logs to make generated metadata more informative and useful than other developed approaches. The problem of current models is ge...
Knowledge Graph (KG) is an emerging topic of research. The promise of KGs is to be able to turn data...
Knowledge graph (KG) publishes machine-readable representation of knowledge on the Web. Structured d...
Automatic knowledge graph (KG) construction is widely used in industry for data integration and acce...
Recently a huge number of knowledge graphs (KGs) has been generated, but there has not been enough a...
Reification in knowledge graphs has been present since the inception of RDF to allow capturing addit...
An advantage of modeling data as a graph – as opposed to a relational data model – is that data grap...
In recent decades, the amount of information that humankind has accumulated has increased tremendous...
International audienceThis book provides a comprehensive and accessible introduction to knowledge gr...
A poster for the Helmholtz Metadata Collaboration Conference 2022. Abstract: Making research re...
The emergence of data lakes has permitted storing a large amount of data coming in different formats...
In this paper we provide a comprehensive introduction to knowledge graphs, which have recently garne...
We present the Data Set Knowledge Graph (DSKG.org), an RDF dataset about datasets that are linked to...
Knowledge graphs have shown to be effective at capturing domain knowledge to extract value from data...
This report researches a method for creating knowledge graphs, a specific way of structuring informa...
Knowledge Graph (KG) is an emerging topic of research. The promise of KGs is to be able to turn data...
Knowledge graph (KG) publishes machine-readable representation of knowledge on the Web. Structured d...
Automatic knowledge graph (KG) construction is widely used in industry for data integration and acce...
Recently a huge number of knowledge graphs (KGs) has been generated, but there has not been enough a...
Reification in knowledge graphs has been present since the inception of RDF to allow capturing addit...
An advantage of modeling data as a graph – as opposed to a relational data model – is that data grap...
In recent decades, the amount of information that humankind has accumulated has increased tremendous...
International audienceThis book provides a comprehensive and accessible introduction to knowledge gr...
A poster for the Helmholtz Metadata Collaboration Conference 2022. Abstract: Making research re...
The emergence of data lakes has permitted storing a large amount of data coming in different formats...
In this paper we provide a comprehensive introduction to knowledge graphs, which have recently garne...
We present the Data Set Knowledge Graph (DSKG.org), an RDF dataset about datasets that are linked to...
Knowledge graphs have shown to be effective at capturing domain knowledge to extract value from data...
This report researches a method for creating knowledge graphs, a specific way of structuring informa...
Knowledge Graph (KG) is an emerging topic of research. The promise of KGs is to be able to turn data...
Knowledge graph (KG) publishes machine-readable representation of knowledge on the Web. Structured d...
Automatic knowledge graph (KG) construction is widely used in industry for data integration and acce...