Control Systems and Computers, N4, 2020, Article 5

https://doi.org/10.15407/csc.2020.04.044

Control Systems and Computers, 2020, Issue 4 (288), pp. 44-55.

UDC 004.94

Halyna A. Pidnebesnajunior research scientist, Department for Technologies of Inductive Modelling, International Research and Training Center for Information Technologies and Systems of the NAS and MES of Ukraine, Glushkov Ave., 40, Kyiv, 03187, Ukraine, pidnnebesna@ukr.net

Andrii V. Pavlovresearch scientist, Department for Technologies of Inductive Modelling, International Research and Training Center for Information Technologies and Systems of the NAS and MES of Ukraine, Glushkov Ave., 40, Kyiv, 03187, Ukraine, andriypavlove@gmail.com

Volodymyr S. Stepashko,  Doctor of Eng. Sciences, Head of the department, International Research and Training Center for Information Technologies and Systems NAS and MES of Ukraine, Glushkov ave., 40, Kyiv, 03187, Ukraine, stepashko@irtc.org.ua

Ontology Application to Construct Inductive Modeling Tools with
Intelligent Interface

This paper is devoted to the analysis of sources in the field of development and building intelligent user interfaces. Particular attention is paid to presenting an ontology-based approach to constructing the architecture of the interface, the tasks arising during the development, and ways for solving them. An example of the construction of the intelligent user interface is given for software tools of inductive modeling based on the detailed analysis of knowledge structures in this domain.

 Download full text! (On English)

Keywords: intelligent user interface; inductive modelling tools; ontology approach; domain metamodel, human-computer interaction; user modeling.

  1. Intelligent Interfaces Theory, Research, and Design. P.A. Hancock and M.H. Chignell (eds), North Holland, New York, 1989.
  2. Kolski, C., Strugeon, E.Le., 1998. “A review of “intelligent” human-machine interfaces in the light of the ARCH model,” Int. J. of Human-Computer Interaction, 10 (3), pp. 193-231.
    https://doi.org/10.1207/s15327590ijhc1003_1
  3. Rogers, Y., Sharp, H., Preece, J., 2011. Interaction Design: Beyond Human-Computer Interaction (3rd ed), Wiley, Chichester.
  4. Welcome to ACM IUI 2020! [online] Available at: <https://iui.acm.org/2020>[Accessed 20 Feb. 2020].
  5. Sonntag, D., 2012. “Collaborative Multimodality,” Künstliche Intelligenz, Springer, 26 (2), pp. 161-168, DOI: 10.1007/s13218-012-0169-4, http://iui.acm.org/2018/ Last accessed 2019/19/22.
    https://doi.org/10.1007/s13218-012-0169-4
  6. Intelligent User Interfaces. [online] Available at: < https://web.cs.wpi.edu/Research/airg/IntInt/intint-outline.html>[Accessed 29 Dec 2019].
  7. Introduction to Model-Based User Interfaces. [online] Available at: <https://www.w3.org/TR/2014/
    NOTE-mbui-intro-20140107>[Accessed 22 March 2020].
  8. Stepashko, V., 2019. “On the Self-organizing Induction-Based Intelligent Modeling,” Advances in Intelligent Systems and Computing III / N. Shakhovska, M.O. Medykovskyy, Editors, AISC book series, Cham: Springer, 871, pp. 433-448.
    https://doi.org/10.1007/978-3-030-01069-0_31
  9. Intelligent User Interfaces: An Introduction, Morgan Kaufmann, RUIU, San Francisco, 1998, pp. 1-13.
  10. Gruber, T., 1995. “Toward principles for the design of ontologies used for knowledge sharing,” Int. J. Human-Computer Studies, 43(5-6), pp. 907-928.
    https://doi.org/10.1006/ijhc.1995.1081
  11. Ahmad, A.-R., Basir, O., Hassanein, Kh., 2004. “Adaptive User Interfaces for Intelligent E-Learning: Issues and Trends,” Proc. ICEB’2004, pp. 925-934.
  12. Pidnebesna, H., 2014. “An ontological approach to user interface design for inductive modeling systems,” Inductive modeling of complex systems, Kyiv: IRTC ITS, 2014, 6, pp. 117-125.
  13. Pidnebesna, H., Stepashko, V., 2018. “On Construction of Inductive Modeling Ontology as a Metamodel of the Subject Field,” Int. Conf. Advanced Computer Information Technologies (ACIT-2018), Ceske Budejovice, University of South Bohemia, pp. 71-74.
  14. Studer, R., Benjamins, V.R., Fensel, D., 1998. “Knowledge Engineering: Principles and methods”, Data & Knowledge Engineering, 25, pp. 161-197.
    https://doi.org/10.1016/S0169-023X(97)00056-6
  15. Spectrum of GMDH algorithms. [online] Available at: <http://www.gmdh.net/GMDH_
    htm>[Accessed 22 Sept. 2020].

 Received  17.08.2020