International audienceThis paper focuses on a framework based on Formal Concept Analysis and the Pattern Structures for classifying sets of RDF triples. The first step proposes how the pattern structures allowing the classification of RDF triples w.r.t. domain knowledge can be constructed. More precisely, the poset of classes representing subjects and objects and the poset of predicates in RDF triples are taken into account. A similarity measure is also proposed based on these posets. Then, the paper discusses experimental details using a subset of DBpedia. It shows how the resulting pattern concept lattice is built and how it can be interpreted for discovering significant knowledge units from the obtained classes of RDF triples
This article presents representation of knowledge patterns in RDF language. The approach to knowledg...
International audienceKnowledge discovery in large and complex datasets is one of the main topics ad...
International audienceKnowledge discovery in large and complex datasets is one main topic addressed ...
International audienceThis paper focuses on a framework based on Formal Concept Analysis and the Pat...
International audienceWith an increased interest in machine processable data and with the progress o...
International audienceWith an increased interest in machine processable data, more and more data is ...
International audienceWe define a pattern structure whose objects are elements of a supporting ontol...
International audienceDuring the last decade, the web has taken a huge importance in everyday life, ...
International audienceWith an increased interest in machine processable data, many datasets are now ...
International audienceIn this paper we study a classification process on relational data that can be...
International audienceThe popularization and quick growth of Linked Open Data (LOD) has led to chall...
International audienceLinked Open Data (LOD) constitute a large and growing collection of inter-doma...
National audienceIn this paper we study a classification process on relational data that can be appl...
International audienceKnowledge discovery in large and complex datasets is one main topic addressed ...
International audienceIn this tutorial we will introduce and discuss how FCA and two main extensions...
This article presents representation of knowledge patterns in RDF language. The approach to knowledg...
International audienceKnowledge discovery in large and complex datasets is one of the main topics ad...
International audienceKnowledge discovery in large and complex datasets is one main topic addressed ...
International audienceThis paper focuses on a framework based on Formal Concept Analysis and the Pat...
International audienceWith an increased interest in machine processable data and with the progress o...
International audienceWith an increased interest in machine processable data, more and more data is ...
International audienceWe define a pattern structure whose objects are elements of a supporting ontol...
International audienceDuring the last decade, the web has taken a huge importance in everyday life, ...
International audienceWith an increased interest in machine processable data, many datasets are now ...
International audienceIn this paper we study a classification process on relational data that can be...
International audienceThe popularization and quick growth of Linked Open Data (LOD) has led to chall...
International audienceLinked Open Data (LOD) constitute a large and growing collection of inter-doma...
National audienceIn this paper we study a classification process on relational data that can be appl...
International audienceKnowledge discovery in large and complex datasets is one main topic addressed ...
International audienceIn this tutorial we will introduce and discuss how FCA and two main extensions...
This article presents representation of knowledge patterns in RDF language. The approach to knowledg...
International audienceKnowledge discovery in large and complex datasets is one of the main topics ad...
International audienceKnowledge discovery in large and complex datasets is one main topic addressed ...