ABOUT THE USE OF MACHINE LEARNING IN MODELING BUSINESS PROCESSES
In a highly competitive environment, as well as the activation of the domestic production market, enterprises need to quickly adapt to modern conditions. There is an obvious increase in the number of small manufacturing enterprises that participate in tenders on electronic trading platforms and offer their services to large enterprises, especially this growth is noticeable in the field of military-industrial complex. Customers prefer to cooperate with small enterprises that are adaptable to the order conditions and have not only short terms of order fulfillment, but also a flexible pricing system due to low administrative and bureaucratic costs. At the same time, such enterprises have problems with the organization of business processes when the volume of orders grows. In this paper, the authors have built a model of the Quality Control process using BPMN method on the basis of small enterprise practice. This model can be the basis for training a machine learning system to build a model of business processes. Natural language text processing is proposed as an area of artificial intelligence, which allows enterprises to use this unified technology to reduce the cost of developing and describing business processes.
Udakhina S.V., Merzlikina A.A. About the use of machine learning in modeling business processes // Research result. Information technologies. – Т. 9, №2, 2024. – P. 60-68. DOI: 10.18413/2518-1092-2024-9-2-0-7
While nobody left any comments to this publication.
You can be first.
1. Lowe R., Pow N., Serban Iu.V., Pineau J. The Ubuntu Dialogue Corpus: A Large Dataset for Research in Unstructured Multi-Turn Dialogue Systems // https://arxiv.org/pdf/1506.08909.pdf
2. Bengio Y., Courville A., Vincent P. Representation learning: A review and new perspectives. Pattern Analysis and Machine Intelligence, IEEE Transactions on, 35(8):1798–1828, 2013.
3. Aguzumtskyan R.V., Velikanova A.S., Polshchikov K.A., Igityan E.V., Likhosherstov R.V. 2021. Application of intellectual technologies of natural language processing and virtual reality means to support decision-making when selecting project executors. Economics. Information technologies, 48(2): 392–404. DOI 10.52575/2687-0932-2021-48-2-392-404.
4. Astapov R.L., Mukhamadeeva R.M. Automation of the selection of machine learning parameters and training in machine learning model / Actual scientific research in the modern world. 2021. No. 5-2 (73). P. 34-37.
5. Gorbunov P.M., Matskevich Yu.A., Chubar A.V. Machine training. Automation of the selection of machine learning model. Materials of the XIII All-Russian Scientific and Technical Conference with international participation "Robotics and Artificial Intelligence". 2021. P. 155-160.
6. Devyatkov V.V., Kadyrbaeva A.R. Verification of knowledge gained in the study of business process models // Bulletin of the Moscow State Technical University. N.E. Bauman. Series Devices. 2020. No. 4 (133). P. 99-113.
7. Demiroglu N.B. Automation of business processes as a condition for the effectiveness of small business // Bulletin of the Altai Academy of Economics and Law. 2020. No. 11-2. P. 212-216.
8. Zhikharev A.G., Korsunov N.I., Mamatov R.A., Shcherbinina N.V., Ponomarenko S.V. 2022. On the development of an adaptive educational platform using machine learning technologies // Economics. Information technologies. 49(4): 810–819. DOI 10.52575/2687-0932-2022-49-4-810-819.
9. Ivanova I.K. State regulation of the Russian economy in the context of Western sanctions // Innovative economy: prospects for development and improvement. 2023. No. 2 (68). P. 80-85.
10. Kiselev D.S., Trifonov P.V. The use of machine learning to optimize business processes // Economics and Management in Engineering. 2019. No. 2. P. 8-11.
11. Kozlov V.P., Prokofieva N.V. Sanctions as global tests of the world economy and their influence on the Russian economy // Materials of the XVII International Scientific and Practical Conference “Economics and Management: Key Problems and Prospects for Development”. Krasnodar, 2023. P. 164-170.
12. Levanda D.Yu., Udakhina S.V. The problem of automation in public procurement // Collection of scientific works of the III International Scientific and Practical Conference "Modernization of the Russian Economy: Forecasts and Reality". 2017. P. 435-437.
13. Levukova V.A. Intelligence and cognitive calculations: the guide to artificial intelligence for business // Tutor of the scientific articles of the XII All-Russian Scientific and Practical Conference “Russian Science: Actual Research and Development”. Samara, 2021. P. 26-29.
14. Mikhailova A.V., Potemkin P.A., Kozur M.M. Machine training technologies for economies and analysis of business processes // Collection of round-tables of round table “Safety in professional activities” as part of the II All-Russian Scientific and Practical Conference “Innovative Technologies and ITS Safety ITS-2020”. St. Petersburg, 2020. P. 94-102.
15. Okuneva E.S., Prilepskaya Yu.V. The use of artificial intelligence and machine learning in modern business processes // Materials of the III International Scientific and Practical Conference "Actual Issues of Modern Economics". St. Petersburg – Vitebsk – Astana – Donetsk on November 9-10, 2023. St. Petersburg, 2023. S. 75-79.
16. Olshevskaya I., Kravchuk A. Automation of the business process as one of the main methodologies for its improvement // Interconf. 2022. No. 18 (95). P. 40-51.
17. Pomerantsev G.A. Formation of a business process model in a sanctions load // Economics: yesterday, today, tomorrow. 2020. T. 10. No. 11-1. P. 92-102
18. Tasueva H.Z.A., Albogachieva L.A., Nikolaeva S.G. Automation of business processes using a systematic approach // Scientific and Technical Bulletin of the Volga region. 2023. No. 12. P. 393-395.
19. Khairitdinov D.U.U., Saidalieva F.Kh. The concept of artificial intelligence and adaptive training, as one of the possibilities of using artificial intelligence in education // Collection of articles XLIX International Scientific and Practical Conference “Fundamental and Applied Research: Actual Issues, Achievements and Innovation”. Penza, 2021. P. 10-12.
20. Citulsky A.M., Ivannikov A.V., Rogov I.S. NLP – processing of natural languages // Studnet. 2020. 3. No. 6. P. 467-475.
21. Yunusbaev R.I. Natural language processing (NLP) // Research Center "Science Discovery". 2023.
No. 12. P. 157-161.