Enriquecimento de ontologias de domínio
uma revisão sistemática da literatura
DOI:
https://doi.org/10.1590/1808-5245.29.127825Keywords:
ontologia de domínio, atualização de ontologia, enriquecimento de ontologia, revista sistemática da literaturaAbstract
Domain ontologies are developed by capturing knowledge from domain experts and/or extracting content from data and information sources. Given the provisionality of human knowledge and the transformations that the physical and social world are subject to, it is important that ontologies are updated whenever necessary. In this context, this article presents a systematic review of the literature on the topic of domain ontologies enrichment for synthesize the main discussions. To this end, we use Kitchenham’s (2004) guidelines for systematic review, together with the Start software for the management and organization of studies. The data collected allowed us to identify some features of published studies on ontology enrichment, such as: sources of information used, types of enrichment most applied, types of information extraction techniques used, as well as the degree of detail of the methods for domain ontologies enrichment. We conclude that this investigation achieved its objective and the topic of domain ontologies enrichment is not yet settled in the Information Science literature.
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