ПОДДЕРЖКА ПРИНЯТИЯ РЕШЕНИЙ ПО СОВЕРШЕНСТВОВАНИЮ ПСИХОФИЗИЧЕСКОЙ ГОТОВНОСТИ К ПРОФЕССИОНАЛЬНОЙ ДЕЯТЕЛЬНОСТИ НА ОСНОВЕ ИНТЕЛЛЕКТУАЛЬНЫХ ТЕХНОЛОГИЙ
Работая с нашим сайтом, вы даете свое согласие на использование файлов cookie. Это необходимо для нормального функционирования сайта, показа целевой рекламы и анализа трафика. Статистика использования сайта отправляется в «Яндекс» и «Google»
Научный журнал Моделирование, оптимизация и информационные технологииThe scientific journal Modeling, Optimization and Information Technology
Online media
issn 2310-6018

SUPPORTING DECISION MAKING TO IMPROVE PSYCHOPHYSICAL READINESS FOR PROFESSIONAL ACTIVITY ON BASIS OF INTELLECTUAL TECHNOLOGIES

Guzairov M.B.   Yusupova N.I.   Smetanina O.N.   Naumova T.V.   Sazonova E.Y.   Agadullina A.I.  

UDC 004.82
DOI: 10.26102/2310-6018/2019.26.3.022

  • Abstract
  • List of references
  • About authors

The article presents the analysis results of current state of Data Mining problem and knowledge formalization to support decision-making. The importance of professionally important qualities (PIQ), which significantly affect the labor efficiency of any specialist, is given. Authors of this article focus on models and methods of intellectual decision support in the development of PIQ. A large amount of knowledge about relationships of PIQ, psychophysical state of a person and effect of exercise on a person has accumulated to date. The source of such knowledge may be textbooks, monographs, expert knowledge. It is noted that taking into account the preparation of students in groups by identifying students with similar characteristics will make it possible to formulate recommendations for groups and conduct joint physical training. A formal statement of the problem of decision-making support in the development of PIQ is given for the effective performance of professional activities, which consists in formalizing expert knowledge (tests for assessing PIQ, exercises for developing PIQ) and implicit knowledge obtained using Data Mining test results for assessing PIQ. In this article authors don't consider questions of knowledge extraction, but they study questions of knowledge formalization and use for making decisions in decision support systems the technology of expert systems. The results of the research presented in this article were supported by Grants RFBR 19-07-00709 and 18-07-00193.

1. O. N. Smetanina, et al., “Information Aspects of Professional Applied Physical Training of Students”, (in Russian), in Proc. 4th Int. Conference on Information Technologies for Intelligent Decision Making Support (ITIDS'2016), Ufa, Russia, 2016, pp. 186-191.

2. T. K. Kravchenko, “Expert Decision Support System”, (in Russian), in Otkrytoe obrazovanie, no. 6, pp. 147-156, 2010.

3. T. K. Kravchenko, “Expert Decision Support System development”, (in Russian), in Artificial Intelligence and Decision Making, no. 4, pp. 72-80, 2013.

4. M. B. Bakanova, “Integration of organizational management systems and intelligent decision support services”, (in Russian), in Artificial Intelligence and Decision Making, no. 3, pp. 17-25, 2011.

5. M. B. Lezhnina, “Expert systems in decision making support”, (in Russian), in Aktual'nyye problemy ekonomiki sovremennoy Rossii, no. 3, pp. 37-41, 2016.

6. V. A. Marenko, Models and algorithms of expert decision support systems for electromagnetic compatibility, (in Russian), Thesis abstract for the degree of candidate of technical sciences, Tyumen, 2004.

7. Barahona P., Ribeiro R. Building an Expert Decision Support System: The Integration of Artificial Intelligence and Operations Research Methods // In: Schader M., Gaul W. (eds) Knowledge, Data and Computer-Assisted Decisions. NATO ASI Series (Series F: Computer and Systems Sciences), Springer, Berlin, Heidelberg. 1990. Vol. 61, pp. 155–168.

8. Lee D. T. Decision-support systems for decision-making // Journal of Information Technology. 1988. Vol. 3, iss. 2, pp. 85–94.

9. Ligȩza A. Expert systems approach to decision support // European Journal of Operational Research. 1988. Vol. 37, iss. 1, pp. 100–110.

10. Ford F. N. Decision support systems and expert systems: A comparison // Information & Management. 1985. Vol. 8, iss. 1, pp. 21–26.

11. Plenert G. Improved Decision Support Systems Help to Build Better Artificial Intelligence Systems // Kybernetes. 1994. Vol. 23, iss. 9, pp. 48–54.

12. V. Sutyagin, “Formalization methods of expert knowledge for filling the knowledge base”, (in Russian), in Molodoy Uchenyy, vol. 1, no. 1, pp. 151- 153, 2012.

13. E. V. Lazarson, “Knowledge formalization and intellectual decision support in choice problems”, (in Russian), in Intelligent Systems in Manufacturing, no. 2(8), pp. 4-14, 2006.

14. T. A. Gavrilova and V. F. Khoroshevsky, Knowledge base of intelligent systems, (in Russian). Saint Petersburg: Piter, 2000.

15. George F. Luger, Artificial intelligence: strategies and methods for complex problem solving, (in Russian). Moscow: Williams, 2004.

16. V. Kroshilin and S. V. Kroshilina, “Formalization of expert knowledge in decision support systems”, (in Russian), in Polzunovskiy vestnik, no. 2, pp. 181-185, 2010.

17. R. Chervinskaya, Psychology of expert knowledge extracting of labor subjects, (in Russian), Thesis abstract for the degree of doctor of psychological sciences, Saint Petersburg, 2010. ]

18. Chervinskaya K. R., Wasserman E. L. Some methodological aspects of tacit knowledge elicitation // Journal of Experimental & Theoretical Artificial Intelligence. 2000. Vol. 12, no. 1. P. 43–55.

19. Alfimtsev A., Sakulin S., Levanov A. Formalization of expert knowledge about the usability of web pages based on user criteria aggregation // International Journal of Software Innovation. 2016. No. 4. P. 38–50. DOI: 10.4018/IJSI.2016070103.

20. Pichler M., Leber D. On the Formalization of Expert Knowledge: A Disaster Management Case Study // Proc. 25th International Workshop on Database and Expert Systems Applications. 2014. P. 149–153. DOI: 10.1109/DEXA.2014.42.

21. Idé T. Formalizing Expert Knowledge Through Machine Learning // In: Kwan S., Spohrer J., Sawatani Y. (eds) Global Perspectives on Service Science: Japan. Service Science: Research and Innovations in the Service Economy. Springer, New York, NY. 2016. https://doi.org/10.1007/978-1-4939-3594- 9_11.

22. . O. N. Smetanina, et al., “Knowledge formalization in support of management decisions”, (in Russian), in Proc. 6th Int. Conference on Information Technologies for Intelligent Decision Making Support (ITIDS'2018), Ufa, Russia, 2018, pp. 7-16.

23. M. L. Nikonorova, “Intelligent analysis of medical data using case technology”, (in Russian), in Vrach i informacionnye tehnologii, no. 1, pp. 54- 59, 2016.

24. V. Kuznetsova and O.V. Senko, “Possibilities of using Data Mining methods in medical and laboratory studies to identify patterns in data arrays”, (in Russian), in Vrach i informacionnye tehnologii, no. 2, pp. 49-56, 2005.

25. V. M. Kureichik and N. A. Polkovnikova, “About intelligent database analysis for the expert system”, (in Russian), in Informatika, vychislitel'naya tekhnika i inzhenernoye obrazovaniye, no. 2, pp. 39-50, 2013.

26. A. Salmin and I. A. Kistanova, “Enterprise business processes improvement using DATA MINING technology”, (in Russian), in Simvol Nauki, no. 2, pp. 76-78, 2016.

27. Kaur C, Omisakin O. M. Data Mining Methods to Improve Clinical Trials in Diabetic Patients // Annals of Clinical and Laboratory Research. 2018. Vol. 6, no. 4:266. DOI:10.21767/2386-5180.100266.

28. Philbert A. Detecting Cheating In Computer Games Using Data Mining Methods // American Journal of Computer Science and Information Technology. 2018. Vol. 6, no. 3:26.

29. Mutihac R. Functional Neuroimaging Data Mining // Journal of Translational Neurosciences. 2018. Vol. 3, no.3:6. DOI: 10.21767/2573-5349.100019.

30. Mellor J. C., Stone M. A., Keane J. Application of Data Mining to «Big Data» Acquired in Audiology: Principles and Potential // Trends Hear. 2018. Vol. 22. https://doi.org/10.1177/2331216518776817.

31. Breiman L. Random Forests // Machine Learning. 2001. Vol. 45, iss. 1. P. 5–

32. Using cluster analysis to classify audiogram shapes/ C. Y. Lee [et. al.] // International Journal of Audiology. 2010. Vol. 49, no. 9, pp. 628–633.

33. Wu X., Kumar V. The top ten algorithms in data mining. Boca Raton, FL: Chapman and Hall/CRC, 2009. 232 p.

34. V. S. Medvedev and V. G. Potemkin “Neural networks. MATLAB 6, (in Russian). Mocsow: Dialog-MIFI, 2002.

35. BaseGroup Labs [Online], URL: https://basegroup.ru/.

36. I. Davidenko, Organization and content of professional applied physical training of students of technical universities, (in Russian), Thesis for the degree of candidate of pedagogical sciences, Krasnodar, 2005.

Guzairov Murat Bakeevich
Doctor of Technical Sciences, Professor
Email: guzairov@gmail.com

Ufa State Aviation Technical University (UGATU)

Ufa, Russian Federation

Yusupova Nafisa Islamovna
Doctor of Technical Sciences, Professor
Email: yussupova@ugatu.ac.ru

Ufa State Aviation Technical University (UGATU)

Ufa, Russian Federation

Smetanina Olga Nikolaevna
Doctor of Technical Sciences, Associate Professor
Email: smoljushka@mail.ru

Ufa State Aviation Technical University (UGATU)

Ufa, Russian Federation

Naumova Tatiana Viktorovna

Email: naumova.21061974@gmail.com

Ufa State Aviation Technical University (UGATU)

Ufa, Russian Federation

Sazonova Ekaterina Yuryevna
Candidate of Technical Sciences
Email: rassadnikova_ekaterina@mail.ru

Ufa State Aviation Technical University (UGATU)

Ufa, Russian Federation

Agadullina Aygul' Il'darovna
Candidate of Technical Sciences
Email: aygul.agadullina@gmail.com

Ufa State Aviation Technical University (UGATU)

Ufa, Russian Federation

Keywords: technology of expert systems, decision support, data mining, professional qualities, knowledge formalization

For citation: Guzairov M.B. Yusupova N.I. Smetanina O.N. Naumova T.V. Sazonova E.Y. Agadullina A.I. SUPPORTING DECISION MAKING TO IMPROVE PSYCHOPHYSICAL READINESS FOR PROFESSIONAL ACTIVITY ON BASIS OF INTELLECTUAL TECHNOLOGIES. Modeling, Optimization and Information Technology. 2019;7(3). Available from: https://moit.vivt.ru/wp-content/uploads/2019/09/GuzairovSoavtori_3_19_1.pdf DOI: 10.26102/2310-6018/2019.26.3.022 (In Russ).

486

Full text in PDF