We propose in this paper a semisupervised method for labeling terms of texts with concepts of a domain ontology. The method generates continuous vector representations of complex terms in a semantic space structured by the ontology. The proposed method relies on a distributional semantics approach, which generates initial vectors for each of the extracted terms. Then these vectors are embedded in the vector space constructed from the structure of the ontology. This embedding is carried out by training a linear model. Finally, we apply a cosine similarity to determine the proximity between vectors of terms and vectors of concepts and thus to assign ontology labels to terms. We have evaluated the quality of these representations for a normali...
Distributed vector space models have recently shown success at capturing the semantic meanings of wo...
L'augmentation considérable de la quantité des données textuelles rend aujourd’hui difficile leur an...
This paper presents a method for integrating DBpedia data into an ontology learning system that auto...
We propose in this paper a semisupervised method for labeling terms of texts with concepts of a doma...
Symbolic approaches have dominated NLP as a means to model syntactic and semantic aspects of natural...
Vector-based semantic analysis is the practice of representing word meanings as semantic vectors, ca...
Concept normalization, the task of linking textual mentions of concepts to concepts in an ontology, ...
This thesis introduces a novel conceptual framework to support the creation of knowledge representat...
Computers understand very little of the meaning of human language. This profoundly limits our abilit...
Empirical distributional methods account for the meaning of syntactic structures by combining word v...
Abstract Background Although there is an enormous number of textual resources in the biomedical doma...
In this dissertation, we introduce a novel text representation method mainly used for text classific...
International audienceKernels are widely used in Natural Language Processing as similarity measures ...
We present a novel compositional, gener-ative model for vector space representa-tions of meaning. Th...
In this thesis, we propose an approach to refine ontologies for a given domain based on training cor...
Distributed vector space models have recently shown success at capturing the semantic meanings of wo...
L'augmentation considérable de la quantité des données textuelles rend aujourd’hui difficile leur an...
This paper presents a method for integrating DBpedia data into an ontology learning system that auto...
We propose in this paper a semisupervised method for labeling terms of texts with concepts of a doma...
Symbolic approaches have dominated NLP as a means to model syntactic and semantic aspects of natural...
Vector-based semantic analysis is the practice of representing word meanings as semantic vectors, ca...
Concept normalization, the task of linking textual mentions of concepts to concepts in an ontology, ...
This thesis introduces a novel conceptual framework to support the creation of knowledge representat...
Computers understand very little of the meaning of human language. This profoundly limits our abilit...
Empirical distributional methods account for the meaning of syntactic structures by combining word v...
Abstract Background Although there is an enormous number of textual resources in the biomedical doma...
In this dissertation, we introduce a novel text representation method mainly used for text classific...
International audienceKernels are widely used in Natural Language Processing as similarity measures ...
We present a novel compositional, gener-ative model for vector space representa-tions of meaning. Th...
In this thesis, we propose an approach to refine ontologies for a given domain based on training cor...
Distributed vector space models have recently shown success at capturing the semantic meanings of wo...
L'augmentation considérable de la quantité des données textuelles rend aujourd’hui difficile leur an...
This paper presents a method for integrating DBpedia data into an ontology learning system that auto...