Ontology learning is considered a potential approach that can help to reduce the bottleneck of knowledge acquisition. However it suffers from a lack of standards to define concepts, besides the lack of fully automatic knowledge acquisition methods. In performing this learning process, the discovery of non-taxonomic relationships has been identified as being the most difficult. This study is then an attempt to create an enhanced framework for discovering and classifying ontological relationships by using a machine learning strategy. We take into consideration the context of the input text in performing the classification of the semantic relations, in particular, causation relations. The proposed framework extracts initial semantic patterns f...
We present an approach for extracting relations from texts that exploits linguistic and empirical st...
Ontology may be a conceptualization of a website into a human understandable, however machinereadabl...
Ontologies are important to organize and describe information, but are hard to create and maintain, ...
Most of the research in this area depends on NLP techniques, machine learning, and statistical appro...
Recently, the NLP community has shown a renewed interest in automatic recognition of semantic relati...
This paper presents a method to integrate external knowledge sources such as DBpedia and OpenCyc int...
Ontology learning tries to find ontological relations, by an automatic process. Similarity relations...
The explosive growth of information at a mind-boggling scale has become an emerging phenomenon of o...
Ontology learning (OL) from texts has been suggested as a technology that helps to reduce the bottle...
In many applications, large-scale ontologies have to be constructed and maintained. A manual constru...
In this thesis we propose an unsupervised system for semantic relation extraction from texts. The au...
Manual construction of ontologies by domain experts and knowledge engineers is a costly task. Thus, ...
Learning Non-Taxonomic Relationships is a sub-field of Ontology Learning that aims at automating th...
By providing interoperability and shared meaning across actors and domains, lightweight domain on...
Non-taxonomic relations between concepts appear as a major building block in common ontology definit...
We present an approach for extracting relations from texts that exploits linguistic and empirical st...
Ontology may be a conceptualization of a website into a human understandable, however machinereadabl...
Ontologies are important to organize and describe information, but are hard to create and maintain, ...
Most of the research in this area depends on NLP techniques, machine learning, and statistical appro...
Recently, the NLP community has shown a renewed interest in automatic recognition of semantic relati...
This paper presents a method to integrate external knowledge sources such as DBpedia and OpenCyc int...
Ontology learning tries to find ontological relations, by an automatic process. Similarity relations...
The explosive growth of information at a mind-boggling scale has become an emerging phenomenon of o...
Ontology learning (OL) from texts has been suggested as a technology that helps to reduce the bottle...
In many applications, large-scale ontologies have to be constructed and maintained. A manual constru...
In this thesis we propose an unsupervised system for semantic relation extraction from texts. The au...
Manual construction of ontologies by domain experts and knowledge engineers is a costly task. Thus, ...
Learning Non-Taxonomic Relationships is a sub-field of Ontology Learning that aims at automating th...
By providing interoperability and shared meaning across actors and domains, lightweight domain on...
Non-taxonomic relations between concepts appear as a major building block in common ontology definit...
We present an approach for extracting relations from texts that exploits linguistic and empirical st...
Ontology may be a conceptualization of a website into a human understandable, however machinereadabl...
Ontologies are important to organize and describe information, but are hard to create and maintain, ...