Analysis of approaches for identification the ontological model components of the searching system

Authors

DOI:

https://doi.org/10.15587/2706-5448.2021.243587

Keywords:

intellectual search system, processing of information, subject area ontologies, semantic system, knowledge bases systems

Abstract

The object of research is the components of an intelligent system for searching information in electronic repositories of unstructured documents, which based on the ontologies of the subject area. One of the most problematic areas is the processing and analysis of information contained in electronic repositories of unstructured documents. There are considered the some possibilities of increasing the efficiency of information processing. In the course of the study, using the method in which ontologies comprise sets of terms presented in it. In addition, the ontological set also includes information about subject areas, areas of definitions, etc. There are obtained the sequence of defining the conceptual representation of an intelligent search system based on ontological components. There are presented the composition of the ontological system model. There are described the main functional components of the system for intelligent processing of information about electronic documents.

The proposed approaches for identifying the component components of the ontological model of the search system have a lot of features. This is due to the fact that the search system model must have a set of properties: integrity, coherence, organization, integrability, mobility. Ontologies which representing the basic concepts of the domain in a format available for automated processing in the form of a hierarchy of classes and relationships between them allow automated processing. The using of ontologies in the role of an intermediary between the user and the search process, between the search process and the search system that can facilitate the solution of a number of complex and non-standard tasks of information retrieval (for example, the automation of the search process). It is possible to solve the problem of knowledge representation for displaying information relevant to user requests, as well as to solve the problems of filtering and classifying information. Compared to similar well-known search systems, this provides such advantages as creating a common terminology for software agents and users, protecting the information store from total overflow and errors, as well as solving the issue of information aging.

Author Biographies

Victoria Kostenko, University of Customs and Finance

Senior Lecturer

Department of Computer Science and Software Engineering

Olga Bulgakova, University of Customs and Finance

Senior Lecturer

Department of Computer Science and Software Engineering

Barbara Stelyuk, University of Customs and Finance

PhD, Associate Professor

Department of Computer Science and Software Engineering

References

  1. ISO/IEC/IEEE 42010. Available at: http://www.iso-architecture.org/ieee-1471/index.html
  2. Evlanov, M. V. (2013). Ontological model of information system architecture, based on service approach. Radіoelektronіka, іnformatika, upravlіnnia, 2, 130–135.
  3. Burov, Ye. V., Pasichnyk, V. V. (2015). Prohramni systemy na bazi ontolohichnykh modelei zadach. Informatsiini systemy ta merezhi, 829 (2), 36–57.
  4. Norenkov, I. P. (2010). Intellectual Technologies on the Base of Ontologies. Informatsionnye tekhnologii, 1, 17–23.
  5. Bashmakov, A. I., Bashmakov, I. A. (2005). Intellektualnye informatsionnye tekhnologii. Moscow: MGTU im. N.E. Baumana, 304.
  6. Schneider, T., Hashemi, A., Bennett, M., Brady, M., Casanave, C., Graves, H. et. al. (2012). Ontology for Big Systems: The Ontology Summit 2012 Communiqué. Applied Ontology, 7 (3), 357–371. doi: http://doi.org/10.3233/ao-2012-0111
  7. Belousova, I. D., Kurzaeva, L. V., Agdavletova, A. M. (2015). K voprosu o soglasovanii trebovanii k soderzhaniiu professionalnoi podgotovki na osnove ontologicheskoi modeli. Sovremennye naukoemkie tekhnologii, 11, 67–70.
  8. Pikuliak, M. V. (2014). Ontological approach to construction of subject sphere on basis of quantum frame model. Medychna informatyka ta inzheneriia, 1, 50–54.
  9. Karpov, I., Burov, Y. (2020). Use of ontological networks in decision support systems under ambiguity. Journal of Lviv Polytechnic National University "Information Systems and Networks", 7, 8–15. doi: http://doi.org/10.23939/sisn2020.07.008
  10. Noy, N. F., McGuinness, D. L. (2001). Ontology Development 101: A Guide to Creating Your First Ontology. Stanford Knowledge Systems Laboratory Technical Report KSL-01-05 and Stanford Medical Informatics Technical Report SMI-2001-0880. Available at: http://protege.stanford.edu/publications/ontology_development/ontology101.html
  11. Antonov, I. V. (2011). Model ontologii predmetnoi oblasti dlia sistem semanticheski-orientirovannogo dostupa. Elektrotekhnika, 12, 339–343.
  12. Paliukh, B. V., Sotnykov, A. N., Yvanov, V. K. (2013). Architecture of intelligent information support system for innovations in science and education. Software & Systems, 4, 203–208.

Downloads

Published

2021-12-07

How to Cite

Kostenko, V., Bulgakova, O., & Stelyuk, B. (2021). Analysis of approaches for identification the ontological model components of the searching system. Technology Audit and Production Reserves, 6(2(62), 10–14. https://doi.org/10.15587/2706-5448.2021.243587

Issue

Section

Information Technologies: Reports on Research Projects