ALGORITHMIC MODEL OF SELECTION OF SCIENTIFIC EVENTS BASED ON THE PROFILE OF SCIENTIFIC ACTIVITY OF UNIVERSITY STAFF
Abstract and keywords
Abstract:
The paper is devoted to the development of models and algorithms that will form the basis of an intellectual agent designed to select scientific events for a university employee. Given the ever-increasing flow of official information, the relevance and practical significance of such a development is beyond doubt. The object of research in the work is the process of scientific activity of teachers, reflected in the accounting documents of the scientific activity of the staff of the department. The subject of the research is models and algorithms for the analysis of scientific activity for the formation of an appropriate teacher profile. The goal is to develop an intelligent agent based on the developed algorithmic model, which ensures the relevant selection of scientific activities for this employee based on his profile. The paper proposes a formalization of the task, develops algorithms for forming a profile of scientific activity and extracting thematic features from information letters, as well as the structure of a decision support system. The developed approach was tested on real information letters, showing its applicability to solving the problem of personalized recommendation of scientific events.

Keywords:
algorithmic model, scientific activity profile, intelligent agent, text analysis, recommendation system
References

1. Russell S., Norvig P. Artificial intelligence: a modern approach. Moscow: Williams, 2006. 1408 p

2. Google Scholar [Electronic resource]. – Access mode: https://scholar.google.com (date of access: 03/19/2026).

3. ResearchGate [Electronic resource]. – Access mode: https://www.researchgate.net (date of access: 03/19/2026).

4. ORCID [Electronic resource]. – Access mode: https://orcid.org (date of request: 03/19/2026).

5. Aggarwal C. C. Recommender Systems: The Textbook. – Cham: Springer, 2016. – 498 p.

6. Wooldridge M. Introduction to multi-agent systems. Moscow: Williams Publishing House, 2010. 512 p.

7. Kormen T., Leiserson Ch., Rivest R., Stein K. Algorithms: construction and analysis. Moscow: Williams, 2013. 1328 p.

8. Bender E. M., Gebru T., McMillan-Major A., Shmitchell S. On the dangers of stochastic parrots // Proceedings of FAccT. – 2021. – Pp. 610-623.

9. Petrovsky A. B., Tarasov V. B. Intelligent decision support systems. – Moscow: Akademiya, 2009. 320 p.

10. Gusev A.V. Scientometric analysis of scientific activity. Moscow: INFRA-M, 2014. 192 p. Sokolov A.V. Information search and data analysis. Moscow: Akademiya Publ., 2012– 272 p.

11. Sokolov A.V. Information search and data analysis. Moscow: Akademiya, 2012. 272 p.

12. Lapshin V. A. Intelligent information systems. – M.: Binom, 2016. 256 p.

13. Kuznetsov S. D. Fundamentals of databases. Moscow: Internet University of Information Technologies, 2012. 484 p.

14. Melekhin V. B., Sergeeva E. G. Decision support systems. Moscow: Finance and Statistics, 2010. 368 p.

15. Braslavskiy P. I., Vorontsov K. V. Search and analysis of textual information. Moscow: Fizmatlit, 2015. 336 p.

16. Vorontsov K. V. Mathematical methods of teaching by precedents. Moscow: ICNMO, 2010. 304 p.

17. Gavrilova T. A., Khoroshevsky V. F. Knowledge bases of intellectual systems. – St. Petersburg: Peter, 2001. – 384 p.

18. The method of selecting projects for inclusion in the total portfolio of orders of a development company / N. N. Taskayeva, A. A. Avagyan, A. A. Gazaryan, Ya. P. Strukov // Economics and entrepreneurship. – 2020. – № 4(117). – Pp. 660-663. – DOIhttps://doi.org/10.34925/EIP.2020.117.4.144. – EDN GQMRVI.

19. The use of artificial intelligence in the automation of personnel selection and evaluation / V. E. Saykinov, T. G. Garbuzova, L. M. Fomicheva, S. E. Litvinova // Economics and management: problems, solutions. – 2025. – Vol. 9, No. 11(164). – pp. 174-184. – DOIhttps://doi.org/10.36871/ek.up.p.r.2025.11.09.019. – EDN PQMDUE.

20. The mechanism of selecting university research projects by the level of their commercial potential / R.R. Ablaev, A.A. Mitus, I.A. Grebeshkova, V.V. Khlebnikova, A.P. Polyakov // Moscow Economic Journal. 2021. No. 11. URL: https://cyberleninka.ru/article/n/mehanizm-otbora-nauchno-issledovatelskih-proektov-universiteta-po-urovnyu-ih-kommercheskogo-potentsiala (date of appeal: 02/05/2026).

21. The algorithm for ranking scientific research projects and developments of the university depending on the level of their commercial potential / B. A. Bukach, K. N. Mitus, S. N. Pisaryuk, A.M. Drebot // Issues of innovative economics. – 2021. – Vol. 11, No. 4. – pp. 1627-1642. – DOIhttps://doi.org/10.18334/vinec.11.4.113815

Login or Create
* Forgot password?