Automation of the development of ontologies of scientific subject domains based on ontology design patterns

Автор: Zagorulko Yury Alekseevich, Sidorova Elena Anatolievna, Zagorulko Galina Borisovna, Akhmadeeva Irina Ravilevna, Sery Alexey Sergeevich

Журнал: Онтология проектирования @ontology-of-designing

Рубрика: Инжиниринг онтологий

Статья в выпуске: 4 (42) т.11, 2021 года.

Бесплатный доступ

At present, ontologies are recognized as the most effective means of formalizing and systematizing knowledge and data in scientific subject domains (SSDs). However, the development of an ontology is a rather complicated and time-consuming process. All indications are that when developing SSDs ontologies, it is especially effective to use ontology design patterns (ODPs). This is due to the fact that the SSD ontology, as a rule, contains a large number of typical fragments, which are well described by the ODPs. In addition, due to the fact that the use of ODPs greatly facilitates the development of an SSD ontology, it is possible to involve experts in a modeled SSD not possessing the skills of ontological modeling. To obtain an ontology that adequately describes the SSD, it is necessary to process a huge number of publications relevant to the modeled SSD. It is possible to facilitate and accelerate the process of populating the ontology with information from such sources by using the lexical and syntactic patterns of ontological design. The paper presents an approach to the automated development of SSDs ontologies based on a system of heterogeneous ODPs. This system includes both ODPs intended for ontology developers and lexical and syntactic patterns built on the basis of the above-mentioned types of the ODPs and the current version of the SSD ontology.

Еще

Ontology design patterns, scientific subject domains, content patterns, automatic generation of lexical and syntactic patterns, ontology population

Короткий адрес: https://sciup.org/170191752

IDR: 170191752   |   DOI: 10.18287/2223-9537-2021-11-4-500-520

Статья научная