We investigate an application of distributional similarity techniques to the problem of structural organisation of biomedical terminology. Our application domain is the relatively small GENIA corpus. Using terms that have been accurately marked-up by hand within the corpus, we consider the problem of automatically determining semantic proximity. Terminological units are dened for our purposes as normalised classes of individual terms. Syntactic analysis of the corpus data is carried out using the Pro3Gres parser and provides the data required to calculate distributional similarity using a variety of dierent measures. Evaluation is performed against a hand-crafted gold standard for this domain in the form of the GENIA ontology. We show that ...
AbstractThe estimation of the semantic similarity between terms provides a valuable tool to enable t...
AbstractSemantic similarity estimation is an important component of analysing natural language resou...
Modelling semantic similarity plays a fundamental role in lexical semantic applications. A natural w...
AbstractOver the past 15 years, a range of methods have been developed that are able to learn human-...
Semantic relatedness is a measure that quantifies the strength of a semantic link between two concep...
Semantic relatedness is a measure that quantifies the strength of a semantic link between two concep...
Background: Semantic relatedness is a measure that quantifies the strength of a semantic link betwee...
In distributional semantics words are represented by aggregated context features. The similarity of ...
Abstract Background Semantic similarity measures estimate the similarity between concepts, and play ...
In distributional semantics, the unsupervised learning approach has been widely used for a large num...
Using distributional analysis methods to compute semantic proximity links between words has become c...
Discovering links and relationships is one of the main challenges in biomedical research, as scienti...
Distributional semantics is built upon the assumption that the context surrounding a given word in t...
AbstractProper understanding of textual data requires the exploitation and integration of unstructur...
One of the most challenging problems in the semantic web field consists of computing the semantic si...
AbstractThe estimation of the semantic similarity between terms provides a valuable tool to enable t...
AbstractSemantic similarity estimation is an important component of analysing natural language resou...
Modelling semantic similarity plays a fundamental role in lexical semantic applications. A natural w...
AbstractOver the past 15 years, a range of methods have been developed that are able to learn human-...
Semantic relatedness is a measure that quantifies the strength of a semantic link between two concep...
Semantic relatedness is a measure that quantifies the strength of a semantic link between two concep...
Background: Semantic relatedness is a measure that quantifies the strength of a semantic link betwee...
In distributional semantics words are represented by aggregated context features. The similarity of ...
Abstract Background Semantic similarity measures estimate the similarity between concepts, and play ...
In distributional semantics, the unsupervised learning approach has been widely used for a large num...
Using distributional analysis methods to compute semantic proximity links between words has become c...
Discovering links and relationships is one of the main challenges in biomedical research, as scienti...
Distributional semantics is built upon the assumption that the context surrounding a given word in t...
AbstractProper understanding of textual data requires the exploitation and integration of unstructur...
One of the most challenging problems in the semantic web field consists of computing the semantic si...
AbstractThe estimation of the semantic similarity between terms provides a valuable tool to enable t...
AbstractSemantic similarity estimation is an important component of analysing natural language resou...
Modelling semantic similarity plays a fundamental role in lexical semantic applications. A natural w...