This paper presents a method for integrating DBpedia data into an ontology learning system that automatically suggests labels for relations in domain ontologies based on large corpora of unstructured text. The method extracts and aggregates verb vectors for semantic relations identified in the corpus. It composes a knowledge base which consists of (i) centroids for known relations between domain concepts, (ii) mappings between concept pairs and the types of known relations, and (iii) ontological knowledge retrieved from DBpedia. Refining similarities between the verb centroids of labeled and unlabeled relations by means of including domain and range constraints applying DBpedia data yields relation type suggestions. A formal evaluation comp...
Semantic relations between concepts or entities exist in textual documents, keywords or key phrases,...
Most work on ontology learning from text relies on unsupervised methods for relation extraction insp...
Semantic relations between concepts or entities exist in textual documents, keywords or key phrases,...
This paper presents a method to integrate external knowledge sources such as DBpedia and OpenCyc int...
Ontology learning (OL) from texts has been suggested as a technology that helps to reduce the bottle...
The manual construction of formal domain conceptualizations (ontologies) is labor-intensive. Ontolog...
Abstract. Ontology learning from text can be viewed as auxilliary technology for knowledge managemen...
The identification and labelling of non-hierarchical relations are among the most challenging tasks ...
Ontologies are important to organize and describe information, but are hard to create and maintain, ...
Ontologisms have been applied to many applications in recent years, especially on Sematic Web, Infor...
DBpedia is a community effort to extract structured information from Wikipedia. It has both inter-es...
By providing interoperability and shared meaning across actors and domains, lightweight domain on...
The value from the growing availability of online documents and ontologies will increase significant...
Most of the research in this area depends on NLP techniques, machine learning, and statistical appro...
The problem of learning concept hierarchies and terminological ontologies can be divided into two su...
Semantic relations between concepts or entities exist in textual documents, keywords or key phrases,...
Most work on ontology learning from text relies on unsupervised methods for relation extraction insp...
Semantic relations between concepts or entities exist in textual documents, keywords or key phrases,...
This paper presents a method to integrate external knowledge sources such as DBpedia and OpenCyc int...
Ontology learning (OL) from texts has been suggested as a technology that helps to reduce the bottle...
The manual construction of formal domain conceptualizations (ontologies) is labor-intensive. Ontolog...
Abstract. Ontology learning from text can be viewed as auxilliary technology for knowledge managemen...
The identification and labelling of non-hierarchical relations are among the most challenging tasks ...
Ontologies are important to organize and describe information, but are hard to create and maintain, ...
Ontologisms have been applied to many applications in recent years, especially on Sematic Web, Infor...
DBpedia is a community effort to extract structured information from Wikipedia. It has both inter-es...
By providing interoperability and shared meaning across actors and domains, lightweight domain on...
The value from the growing availability of online documents and ontologies will increase significant...
Most of the research in this area depends on NLP techniques, machine learning, and statistical appro...
The problem of learning concept hierarchies and terminological ontologies can be divided into two su...
Semantic relations between concepts or entities exist in textual documents, keywords or key phrases,...
Most work on ontology learning from text relies on unsupervised methods for relation extraction insp...
Semantic relations between concepts or entities exist in textual documents, keywords or key phrases,...