The tables embedded in Wikipedia articles contain rich, semi-structured encyclopaedic content. However, the cumulative content of these tables cannot be queried against. We thus propose methods to recover the semantics of Wikipedia tables and, in particular, to extract facts from them in the form of RDF triples. Our core method uses an existing Linked Data knowledge-base to find pre-existing relations between entities in Wikipedia tables, suggesting the same relations as holding for other entities in analogous columns on different rows. We find that such an approach extracts RDF triples from Wikipedia's tables at a raw precision of 40%. To improve the raw precision, we define a set of features for extracted triples that are tracked during t...
The Web bears the potential of being the world’s greatest encyclopedic source, but we are far from f...
Abstract. Wikipedia pagelinks, i.e. links between Wikipages, carry an intended semantics: they indic...
Abstract. The Wikipedia is the largest online collaborative knowledge sharing system, a free encyclo...
We are currently investigating methods to triplify the content of Wikipedia's tables. We propose tha...
Tables are widely used in Wikipedia articles to display relational information - they are inherently...
Many attempts have been made to extract structured data from Web resources, exposing them as RDF tri...
Tables in Wikipedia articles contain a wealth of knowledge that would be useful for many application...
In this paper, we describe an end-to-end system that automatically extracts RDF triples describing e...
The increasing role of Wikipedia as a source of human-readable knowledge is evident as it contains a...
Abstract. The exponential growth of Wikipedia recently attracts the attention of a large number of r...
Wikipedia is playing an increasing role as a source of humanreadable knowledge, because it contains ...
Im Projekt DBpedia werden unter anderem Informationen aus Wikipedia-Artikeln in RDF-Tripel umgewande...
This paper proposes the automatic acquisition of binary relational patterns (i.e. portions of text e...
The exponential growth and reliability of Wikipedia have made it a promising data source for intelli...
This paper proposes the automatic acquisition of binary relational patterns (i.e. portions of text e...
The Web bears the potential of being the world’s greatest encyclopedic source, but we are far from f...
Abstract. Wikipedia pagelinks, i.e. links between Wikipages, carry an intended semantics: they indic...
Abstract. The Wikipedia is the largest online collaborative knowledge sharing system, a free encyclo...
We are currently investigating methods to triplify the content of Wikipedia's tables. We propose tha...
Tables are widely used in Wikipedia articles to display relational information - they are inherently...
Many attempts have been made to extract structured data from Web resources, exposing them as RDF tri...
Tables in Wikipedia articles contain a wealth of knowledge that would be useful for many application...
In this paper, we describe an end-to-end system that automatically extracts RDF triples describing e...
The increasing role of Wikipedia as a source of human-readable knowledge is evident as it contains a...
Abstract. The exponential growth of Wikipedia recently attracts the attention of a large number of r...
Wikipedia is playing an increasing role as a source of humanreadable knowledge, because it contains ...
Im Projekt DBpedia werden unter anderem Informationen aus Wikipedia-Artikeln in RDF-Tripel umgewande...
This paper proposes the automatic acquisition of binary relational patterns (i.e. portions of text e...
The exponential growth and reliability of Wikipedia have made it a promising data source for intelli...
This paper proposes the automatic acquisition of binary relational patterns (i.e. portions of text e...
The Web bears the potential of being the world’s greatest encyclopedic source, but we are far from f...
Abstract. Wikipedia pagelinks, i.e. links between Wikipages, carry an intended semantics: they indic...
Abstract. The Wikipedia is the largest online collaborative knowledge sharing system, a free encyclo...