Abstract. The discovery of relationships between concepts is a crucial point in ontology learning (OL). In most cases, OL is achieved from a collection of domain-specific texts, describing the concepts of the domain and their relationships. A natural way to represent the description as-sociated to a particular text is to use a structured term (or tree). We present a method for learning transformation rules, rewriting natural language texts into trees, where the input examples are couples (text, tree). The learning process produces an ordered set of rules such that, applying these rules to a text gives the corresponding tree
The Web of Open Linked Data (OLD) is a recommended best practice for exposing, sharing, and connecti...
International audienceThe Web of Open Linked Data (OLD) is a recommended best practice for exposing,...
The problem of learning concept hierarchies and terminological ontologies can be divided into two su...
from structured documents. Abstract: Most existing methods for ontology learning from textual docume...
This chapter deals with the issue of translating natural language representations so that their sema...
We argue in favor of using a graph-based representation for language meaning and propose a novel lea...
In many applications, large-scale ontologies have to be constructed and maintained. A manual constru...
This paper presents an approach for inducing transformation rules that map natural-language sentence...
This paper presents a method for inducing transformation rules that map natural-language sentences i...
Most existing methods for ontology learning from textual documents rely on the natural language anal...
This article describes a method of transformation of object-relational model into ontology. The offe...
Abstract. In this paper, we propose a new framework for the computational learning of formal grammar...
this paper an ontology consists of both schema and instantiating data. An ontology O is therefore de...
In this paper we present an unsupervised model for learning arbitrary relations between concepts of ...
Knowledge in textual form is always presented as visually and hierarchically structured units of tex...
The Web of Open Linked Data (OLD) is a recommended best practice for exposing, sharing, and connecti...
International audienceThe Web of Open Linked Data (OLD) is a recommended best practice for exposing,...
The problem of learning concept hierarchies and terminological ontologies can be divided into two su...
from structured documents. Abstract: Most existing methods for ontology learning from textual docume...
This chapter deals with the issue of translating natural language representations so that their sema...
We argue in favor of using a graph-based representation for language meaning and propose a novel lea...
In many applications, large-scale ontologies have to be constructed and maintained. A manual constru...
This paper presents an approach for inducing transformation rules that map natural-language sentence...
This paper presents a method for inducing transformation rules that map natural-language sentences i...
Most existing methods for ontology learning from textual documents rely on the natural language anal...
This article describes a method of transformation of object-relational model into ontology. The offe...
Abstract. In this paper, we propose a new framework for the computational learning of formal grammar...
this paper an ontology consists of both schema and instantiating data. An ontology O is therefore de...
In this paper we present an unsupervised model for learning arbitrary relations between concepts of ...
Knowledge in textual form is always presented as visually and hierarchically structured units of tex...
The Web of Open Linked Data (OLD) is a recommended best practice for exposing, sharing, and connecti...
International audienceThe Web of Open Linked Data (OLD) is a recommended best practice for exposing,...
The problem of learning concept hierarchies and terminological ontologies can be divided into two su...