Model for Data Objects Selection by Search Image for Intelligent Recommender Systems
( Pp. 43-50)
More about authors
Nikolaev Konstantin S.
assistant, Institute of System and Software Engineering and Information Technologies (SPINTekh Institute), graduate student
National Research University “Moscow Institute of Electronic Technology (MIET)”
Moscow, Russian Federation Gagarina Larisa G. Dr. Sci. (Eng.), Professor; Director, Institute of System and Software Engineering and Information Technologies (SPINTekh Institute), Professor; National Research University “Moscow Institute of Electronic Technology (MIET)”; Moscow, Russian Federation
National Research University “Moscow Institute of Electronic Technology (MIET)”
Moscow, Russian Federation Gagarina Larisa G. Dr. Sci. (Eng.), Professor; Director, Institute of System and Software Engineering and Information Technologies (SPINTekh Institute), Professor; National Research University “Moscow Institute of Electronic Technology (MIET)”; Moscow, Russian Federation
Abstract:
The research is conducted to develop and analyze an object filtering model for intelligent recommender systems. The main objective is to solve the problem of orientation in the vast amounts of information accumulated by mankind. The aim of the research is to create an effective tool for systematization and knowledge management, which in turn contributes to the optimization of decision-making processes and interaction with data. The paper focuses on the research and development of an object filtering model for intelligent recommender systems. Within the methodology and research area, the developed model is described in detail and the theoretical and practical aspects of the methodology are analyzed. In this paper, a variant of the problem statement of the research and development of an object filtering model for intelligent recommender systems is presented. In addition, the paper deconstructs the second stage of this problem, emphasizing its importance in the context of achieving system performance. The results of the study are analyzed in detail, highlighting the key points and features of the proposed model. The scope of the study is reviewed, detailing the prospects of applying the results in scientific and practical applications, providing the reader with a deeper understanding of the potential of the proposed model. The object filtering model has a high potential of usefulness for business and manufacturing. This work will be useful for developers and researchers of recommender systems in which users rarely or never interact with the same object.
How to Cite:
Nikolaev K.S., Gagarina L.G. Model for Data Objects Selection by Search Image for Intelligent Recommender Systems. Computational Nanotechnology. 2024. Vol. 11. No. 2. Pp. 43–50. (In Rus.). DOI: 10.33693/2313-223X-2024-11-2-43-50. EDN: MNWJNP
Reference list:
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Obolensky D.M., Shevchenko D.I. Review of modern methods of building recommendation systems based on collaborative filtering. In: World of computer technologies. Collection articles of the All-Russian scientific and technical conference of students, graduate students and young scientists, Sevastopol, April 6–10, 2020. E.N. Mashchenko (scien. ed.). Sevastopol: SevGU, 2020. Pp. 97–102.
Pisareva A.I., Petrov V.Yu. Recommendation systems as a tool for automating business processes. Colloquium Journal. 2020. No. 15-1. Pp. 36–39. (In Rus.)
Chipchagov M.S., Kublik E.I., Popov V.A. The algorithm of indexing the objects of the recommendation system. Izvestia of Higher Educational Institutions. Electronics. 2023. No. 2. Pp. 252–260. (In Rus.)
Chumakova M.S., Vtornikova Yu.V., Matrokhin N.A. et al. Interdisciplinary problems of human-machine interface. Moscow: OntoPrint, 2023. Pp. 132–138.
Yakunin M.A. Research of approaches towards the construction of a universal recommendation system based on information search with elements of machine learning. In: Actual problems of modern science. Collection articles of the scientific and technical conference. Penza: Scientific and Education, 2018. Pp. 256–265.
Singh P.K. et al. Recommender systems: an overview, research trends, and future directions. International Journal of Business and Systems Research. 2021. Vol. 15. No. 1. Pp. 14–52.
Zhang Q., Lu J., Jin Y. Artificial intelligence in recommender systems. Complex & Intelligent Systems. Vol. 7. Pp. 439–457.
Gagarina L.G., Bolotin Yu.S., Bolotina E.S. Research and development of filtering techniques for a recommendation system. Proceedings of Tula State University. 2023. No. 1. Pp. 387–390. (In Rus.)
Zharova M.A., Tsurkov V.I. Neural network approaches for recommendation systems. Proceedings of the Russian Academy of Sciences. Theory and control systems. 2023. No. 6. Pp. 150–165. (In Rus.)
Kosheleva D.D., Davydov I.I. Machine learning in recommendation systems. Actual Issues of Fundamental and Applied Scientific Research. 2023. No. 1. Pp. 82–87. (In Rus.)
Kruglik A.S., Lakman I.A. Hybrid approach of content-enhanced collaborative filtering in the field of recommendation systems. Information technology. 2020. Vol. 26. No. 9. Pp. 523–528. (In Rus.)
Nikolaev K.S. Research and development of a model and algorithm for obtaining a search image for intelligent recommendation systems. Prospects of Science. 2023. No. 11 (170). P. 41. (In Rus.)
Nikolaev K.S. Research and development of an object filtering model for intelligent recommendation systems. Systems of Computer Mathematics and Their Applications. 2023. No. 24. Pp. 171–175. (In Rus.). EDN: DXGFTW.
Obolensky D.M., Shevchenko D.I. Review of modern methods of building recommendation systems based on collaborative filtering. In: World of computer technologies. Collection articles of the All-Russian scientific and technical conference of students, graduate students and young scientists, Sevastopol, April 6–10, 2020. E.N. Mashchenko (scien. ed.). Sevastopol: SevGU, 2020. Pp. 97–102.
Pisareva A.I., Petrov V.Yu. Recommendation systems as a tool for automating business processes. Colloquium Journal. 2020. No. 15-1. Pp. 36–39. (In Rus.)
Chipchagov M.S., Kublik E.I., Popov V.A. The algorithm of indexing the objects of the recommendation system. Izvestia of Higher Educational Institutions. Electronics. 2023. No. 2. Pp. 252–260. (In Rus.)
Chumakova M.S., Vtornikova Yu.V., Matrokhin N.A. et al. Interdisciplinary problems of human-machine interface. Moscow: OntoPrint, 2023. Pp. 132–138.
Yakunin M.A. Research of approaches towards the construction of a universal recommendation system based on information search with elements of machine learning. In: Actual problems of modern science. Collection articles of the scientific and technical conference. Penza: Scientific and Education, 2018. Pp. 256–265.
Keywords:
object filtering, search sample image, recommendation systems.
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