Resumen:
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[EN] Knowledge engineering relies on ontologies, since they provide formal descriptions of
real¿world knowledge. However, ontology development is still a nontrivial task. From the view of
knowledge engineering, ontology ...[+]
[EN] Knowledge engineering relies on ontologies, since they provide formal descriptions of
real¿world knowledge. However, ontology development is still a nontrivial task. From the view of
knowledge engineering, ontology learning is helpful in generating ontologies semi¿automatically
or automatically from scratch. It not only improves the efficiency of the ontology development pro¿
cess but also has been recognized as an interesting approach for extending preexisting ontologies
with new knowledge discovered from heterogenous forms of input data. Driven by the great poten¿
tial of ontology learning, we present an automatic ontology¿based model evolution approach to ac¿
count for highly dynamic environments at runtime. This approach can extend initial models ex¿
pressed as ontologies to cope with rapid changes encountered in surrounding dynamic environ¿
ments at runtime. The main contribution of our presented approach is that it analyzes heterogene¿
ous semi¿structured input data for learning an ontology, and it makes use of the learned ontology
to extend an initial ontology¿based model. Within this approach, we aim to automatically evolve an
initial ontology¿based model through the ontology learning approach. Therefore, this approach is
illustrated using a proof¿of¿concept implementation that demonstrates the ontology¿based model
evolution at runtime. Finally, a threefold evaluation process of this approach is carried out to assess
the quality of the evolved ontology¿based models. First, we consider a feature¿based evaluation for
evaluating the structure and schema of the evolved models. Second, we adopt a criteria¿based eval¿
uation to assess the content of the evolved models. Finally, we perform an expert¿based evaluation
to assess an initial and evolved models¿ coverage from an expert¿s point of view. The experimental
results reveal that the quality of the evolved models is relevant in considering the changes observed
in the surrounding dynamic environments at runtime.
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