Unsupervised Learning of Semantic Relations between Concepts of a Molecular Biology Ontology

In this paper we present an unsupervised model for learning arbitrary relations between concepts of a molecular biology ontology for the purpose of supporting text mining and manual ontology build- ing. Relations between named-entities are learned from the GENIA corpus by means of several stan- dard natural language processing techniques. An in-depth analysis of the output of the system shows that the model is accurate and has good potentials for text mining and ontology building applications.

Publication type: 
Contributo in atti di convegno
Author or Creator: 
Ciaramita, M., Gangemi, A.
Ratsch, E.
Saric, J., Rojas, I.
Publisher: 
ACM Press, New York, USA
Source: 
Nineteenth International Joint Conference on Artificial Intelligence (IJCAI-05), pp. 659–664, Edinburgh, 2005
Date: 
2005
Resource Identifier: 
http://www.cnr.it/prodotto/i/139769
urn:isbn:0938075934
Language: 
Eng
ISTC Author: 
Aldo Gangemi's picture
Real name: