Title :
Apponto-Pro: An incremental process for ontology learning and population
Author :
Santos, Sara ; Girardi, Rosario
Author_Institution :
Dept. de Inf., Univ. Fed. do Maranhao, São Luís, Brazil
Abstract :
Ontologies are knowledge representation structures supporting the development of effective and usable software systems. However, the manual construction of ontologies is expensive and error prone. Therefore, this task should be conducted in an automated way. Various techniques and tools for learning the different components of an ontology from textual sources have been developed. These components are classes, hierarchies, non taxonomic relationships, instances, properties and axioms. However, there is a lack of techniques to undertake the learning of all these components together in a common process. This article proposes Apponto-Pro, an incremental process for learning and populating all the elements of an ontology automatically. The process is been evaluated with a case study on the automatic construction of a Family Law application ontology.
Keywords :
learning (artificial intelligence); ontologies (artificial intelligence); text analysis; Apponto-Pro; automatic family law application ontology construction; incremental process; knowledge representation structures; ontology learning; ontology population; taxonomic relationships; textual sources; usable software systems; Ontologies; Ontology Learning; Ontology Population;
Conference_Titel :
Information Systems and Technologies (CISTI), 2014 9th Iberian Conference on
Conference_Location :
Barcelona
DOI :
10.1109/CISTI.2014.6876966