We introduce a methodology for automating the maintenance of domain-specific ontologies based on natural language text understanding. A given taxonomy is incrementally updated as new concepts are acquired from real-world texts. The acquisition process is centered around the linguistic and conceptual "quality" of various forms of evidence underlying the generation and refinement of concept hypotheses. On the basis of the quality of evidence, concept hypotheses are ranked according to credibility and the most credible ones are selected for assimilation into the domain knowledge base
Text understanding makes strong assumptions about the conceptualisation of the underlying knowledge ...
Text understanding makes strong assumptions about the conceptualisation of the underlying knowledge ...
Text understanding makes strong assumptions about the conceptualisation of the underlying knowledge ...
We introduce a methodology for automating the maintenance of domain-specific taxonomies based on nat...
We introduce a methodology for automating the maintenance of domain-specific taxonomies based on nat...
A text understanding system with learning capabilities is presented. New concepts are acquired by in...
A text understanding system with learning capabilities is presented. New concepts are acquired by in...
We introduce a dual-use methodology for automating the maintenance and growth of two types of knowle...
Abstract. This paper overviews and analyses the on-going research attempts to apply language technol...
The use of ontologies in knowledge engineering arose as a solution to the difficulties associated wi...
We present initial experimental results of an approach to learning ontological concepts from text. F...
Abstract—Learning ontology from text is a challenge in knowledge engineering research and practice. ...
A method that could be used to populate, or more accurately to seed, terminology collections, and su...
Text understanding makes strong assumptions about the conceptualisation of the underlying knowledge ...
This paper describes an approach to alleviating the well-known problem of the knowledge acquisition ...
Text understanding makes strong assumptions about the conceptualisation of the underlying knowledge ...
Text understanding makes strong assumptions about the conceptualisation of the underlying knowledge ...
Text understanding makes strong assumptions about the conceptualisation of the underlying knowledge ...
We introduce a methodology for automating the maintenance of domain-specific taxonomies based on nat...
We introduce a methodology for automating the maintenance of domain-specific taxonomies based on nat...
A text understanding system with learning capabilities is presented. New concepts are acquired by in...
A text understanding system with learning capabilities is presented. New concepts are acquired by in...
We introduce a dual-use methodology for automating the maintenance and growth of two types of knowle...
Abstract. This paper overviews and analyses the on-going research attempts to apply language technol...
The use of ontologies in knowledge engineering arose as a solution to the difficulties associated wi...
We present initial experimental results of an approach to learning ontological concepts from text. F...
Abstract—Learning ontology from text is a challenge in knowledge engineering research and practice. ...
A method that could be used to populate, or more accurately to seed, terminology collections, and su...
Text understanding makes strong assumptions about the conceptualisation of the underlying knowledge ...
This paper describes an approach to alleviating the well-known problem of the knowledge acquisition ...
Text understanding makes strong assumptions about the conceptualisation of the underlying knowledge ...
Text understanding makes strong assumptions about the conceptualisation of the underlying knowledge ...
Text understanding makes strong assumptions about the conceptualisation of the underlying knowledge ...