An important task of ontology learning is to enrich the vocabulary for domain ontologies using different sources of information. WordNet1, an online lexical database covering many domains, has been widely used as a source from which to mine new vocabulary for ontology enrichment. However, since each word submitted to WordNet may have several different meanings (senses), existing approaches still face the problem of semantic disambiguation in order to select the correct sense for the new vocabulary to be added. In this paper, we present a similarity computation method that allows us to efficiently select the correct WordNet sense for a concept-word in a given ontology. Once the correct sense is identified, we can then enrich the concept’s vo...
Summarization: Semantic Similarity relates to computing the similarity between concepts (terms) whic...
Millions of text data are penetrating into our daily life. These unstructured text data serve as a h...
Abstract. This paper explores a fully automatic knowledge-based method which performs the noun sense...
In spite of the growing of ontological engineering tools, ontology knowledge acquisition remains a h...
Abstract—Concept name similarity calculation between ontologies is the basis of ontology mapping. Ma...
This paper presents a model to measure semantic similarity between custom ontology concepts and the...
This paper presents a model to measure semantic similarity between custom ontology concepts and the...
In this work I have used a number of different semantic similarity measures and WordNet to enrich an...
Abstract. This paper is concerned with lexical enrichment of ontologies, i.e. how to enrich a given ...
With the proliferation of applications sharing information represented in multiple ontologies, the d...
We describe the automatic construction of a semantic net-work1, in which over 3000 of the most frequ...
Ontology mapping is a crucial task for the facilitation of information exchange and data integration...
We describe the automatic construction of a semantic network1, in which over 3000 of the most freque...
Summarization: Semantic Similarity relates to computing the similarity between concepts which are no...
We present a method and a tool, OntoLearn, aimed at the extraction of domain ontologies from Web sit...
Summarization: Semantic Similarity relates to computing the similarity between concepts (terms) whic...
Millions of text data are penetrating into our daily life. These unstructured text data serve as a h...
Abstract. This paper explores a fully automatic knowledge-based method which performs the noun sense...
In spite of the growing of ontological engineering tools, ontology knowledge acquisition remains a h...
Abstract—Concept name similarity calculation between ontologies is the basis of ontology mapping. Ma...
This paper presents a model to measure semantic similarity between custom ontology concepts and the...
This paper presents a model to measure semantic similarity between custom ontology concepts and the...
In this work I have used a number of different semantic similarity measures and WordNet to enrich an...
Abstract. This paper is concerned with lexical enrichment of ontologies, i.e. how to enrich a given ...
With the proliferation of applications sharing information represented in multiple ontologies, the d...
We describe the automatic construction of a semantic net-work1, in which over 3000 of the most frequ...
Ontology mapping is a crucial task for the facilitation of information exchange and data integration...
We describe the automatic construction of a semantic network1, in which over 3000 of the most freque...
Summarization: Semantic Similarity relates to computing the similarity between concepts which are no...
We present a method and a tool, OntoLearn, aimed at the extraction of domain ontologies from Web sit...
Summarization: Semantic Similarity relates to computing the similarity between concepts (terms) whic...
Millions of text data are penetrating into our daily life. These unstructured text data serve as a h...
Abstract. This paper explores a fully automatic knowledge-based method which performs the noun sense...