User Behavior Analysis Using Web-based Machine Learning Features: New Solutions for IT Business

Roman Mysiuk, Oleksii Kononenko, Andriy Svystovych, Oleksii Ozhyhov, Nazar Osadets, Yuriy Kuchmak, Andrii Pohrebniak, Yuriy Honsor

Abstract

The development of information technologies in IT business increases the interest in executing machine learning models directly on the client browser, reducing the load on the server and the number of levels of access to it. At the same time, some features have advantages and disadvantages, associated with a smaller amount of information transmitted over the network, limited power of client devices, and others. Among modern client-side tools with machine learning capabilities, Tensorflow.js is suitable, which can be used to analyse user behaviour in web applications for classification and clustering models based on their behavioural patterns, predict future user behaviour trends, detect unusual or suspicious user actions, recommendation models based on their previous behaviour. The article analyses the features of implementation and the limitations associated with the use, specifically regarding the behaviour of users in social networks. The model was formed based on data from news posts on social networks Instagram and Facebook, with the following parameters of user activity, such as the number of likes, comments, and shares according to the post's text. These aspects are a significant addition to the tools that can be applied within the economic, technical, and other means of IT business development. Considering this, it is advisable to study the formation and development of the innovation management system in e-business in the future.



Keywords


business; IT business; machine learning; tensorflow; user behaviour analysis; data analysis; social network; data processing; е-business development

Full Text:

PDF


References


1. G. Martín, A., Fernández-Isabel, A., Martín de Diego, I., & Beltrán, M. (2021). A survey for user behavior analysis based on machine learning techniques: current models and applications. Applied Intelligence, 51(8), 6029–6055. doi: 10.1007/s10489-020-02160-x

2. Callara, M., & Wira, P. (2018). User Behavior Analysis with Machine Learning Techniques in Cloud Computing Architectures. 2018 International Conference on Applied Smart Systems (ICASS). doi: 10.1109/icass.2018.8651961

3. Moon, J., Kim, Y., & Rho, S. (2022). User Behavior Analytics with Machine Learning for Household Electricity Demand Forecasting. 2022 International Conference on Platform Technology and Service (PlatCon). doi: 10.1109/platcon55845.2022.9932037

4. Ranjan, R., & Kumar, S. S. (2022). User behaviour analysis using data analytics and machine learning to predict malicious user versus legitimate user. High-Confidence Computing, 2(1), 100034. doi: 10.1016/j.hcc.2021.100034

5. Kniaz, S., Brych, V., Heorhiadi, N., Tyrkalo, Y., Luchko, H., & Skrynkovskyy, R. (2023). Data Processing Technology in Choosing the Optimal Management Decision System. 2023 13th International Conference on Advanced Computer Information Technologies (ACIT), Wrocław, Poland, 372–375. 10.1109/acit58437.2023.10275581

6. Skrynkovskyy, R., Pavlenchyk, N., Tsyuh, S., Zanevskyy, I., & Pavlenchyk, A. (2022). Economic-mathematical model of enterprise profit maximisation in the system of sustainable development values. Agricultural and Resource Economics: International Scientific E-Journal, 8(4), 188–214. 10.51599/are.2022.08.04.09

7. Yuzevych V., Klyuvak O., Skrynkovskyy R. (2016). Diagnostics of the system of interaction between the government and business in terms of public e-procurement. Economic Annals-ХХI, 160(7–8), 39–44. doi: 10.21003/ea.v160-08

8. Mysiuk, R. V., Yuzevych, V. M., Yasinskyi, M. F., Kniaz, S. V., Duriagina, Z. A., & Kulyk, V. V. (2022). Determination of conditions for loss of bearing capacity of underground ammonia pipelines based on the monitoring data and flexible search algorithms. Archives of Materials Science and Engineering, 115(1), 13–20. doi: 10.5604/01.3001.0016.0671

9. Mysiuk, R., Yuzevych, V., Koman, B., & Yasinskyi, M. (2022). High Availability System for Monitoring Material Degradation Processes at the Concrete-polymer Interface. 2022 12th International Conference on Advanced Computer Information Technologies (ACIT). doi: 10.1109/acit54803.2022.9913086

10. Pavlyshenko, B. M. (2021). Forming Predictive Features of Tweets for Decision-Making Support. Lecture Notes on Data Engineering and Communications Technologies, 479–490. doi: 10.1007/978-3-030-82014-5_32

11. Mysiuk, R., Yuzevych, V., Mysiuk, I., Tyrkalo, Y., Pavlenchyk, A., & Dalyk, V. (2023). Detection of Surface Defects Inside Concrete Pipelines Using Trained Model on JetRacer Kit. 2023 IEEE 13th International Conference on Electronics and Information Technologies (ELIT). doi: 10.1109/elit61488.2023.10310691

12. Dzhala, R., Yuzevych, V., Mysiuk, R., Brych, V., Skrynkovskyy, R., Lozovan, V., & Tyrkalo, Y. (2022). Simulation of Corrosion Fracture of Nano-Concrete at the Interface with Reinforcement Taking into Account Temperature Change. Retrieved from https://ceur-ws.org/Vol-3312/paper10.pdf

13. Skrynkovskyy, R., Kataiev, A., Zaiats, O., Andrushchenko, H., & Popova, N. (2021). Competitiveness of The Company on The Market: Analytical Method of Assessment and The Phenomenon of The Impact of Corruption in Ukraine. Journal of Optimization in Industrial Engineering, 14(Special Issue), 79–86. doi: 10.22094/joie.2020.677836

14. Sumets, A., Kniaz, S., Heorhiadi, N., Skrynkovskyy, R., & Matsuk, V. (2022). Methodological toolkit for assessing the level of stability of agricultural enterprises. Agricultural and Resource Economics: International Scientific E-Journal, 8(1), 235–255. doi: 10.51599/are.2022.08.01.12

15. Skrynkovskyi, R. M. (2011). Methodical approaches to economic estimation of investment attractiveness of machine-building enterprises for portfolio investors. Actual Problems of Economics, 118(4), 177–186.

16. Skrynkovskyi, R. (2008). Investment attractiveness evaluation technique for machine-building enterprises. Actual Problems of Economics, 7(85), 228–240.

17. Mysiuk, I., Mysiuk, R., Shuvar, R., Yuzevych, V., Hudyma, V., & Vizniak, Y. (2023). Category Classification of Content from Instagram Business Pages. 2023 13th International Conference on Advanced Computer Information Technologies (ACIT). doi: 10.1109/acit58437.2023.10275458

18. Serniak, I., Serniak, O., Mykhailyshyn, L., Skrynkovskyy, R., & Kasian, S. (2021). Evaluation of the level of the usage of social instruments for human resource management: example of agro-processing enterprises of Ukraine. Agricultural and Resource Economics: International Scientific E-Journal, 7(4), 82–99. doi: 10.51599/are.2021.07.04.05

19. Jain, A. K., Sahoo, S. R., & Kaubiyal, J. (2021). Online social networks security and privacy: comprehensive review and analysis. Complex & Intelligent Systems, 7(5), 2157–2177. doi: 10.1007/s40747-021-00409-7

20. Sumets, A., Serbov, M., Skrynkovskyy, R., Faldyna, V., & Satusheva, K. (2020). Analysis of influencing factors on the development of agricultural enterprises based on e-commerce technologies. Agricultural and Resource Economics: International Scientific E-Journal, 6(4), 211–231. doi: 10.51599/are.2020.06.04.11

21. Popova, N., Kataiev, A., Nevertii, A., Kryvoruchko, O., & Skrynkovskyy, R. (2021). Marketing Aspects of Innovative Development of Business Organizations in the Sphere of Production, Trade, Transport, and Logistics in VUCA Conditions. Studies of Applied Economics, 38(4). doi: 10.25115/eea.v38i4.3962

22. Popova, N., Kataiev, A., Skrynkovskyy, R., & Nevertii, A. (2019). Development of trust marketing in the digital society. Economic Annals-ХХI, 176(3–4), 13–25. doi: 10.21003/ea.v176-02

23. Popivniak, Y. M. (2019). Cybersecurity and Protection of Accounting Data under Conditions of Modern Information Technology. Business Inform, 8(499), 150–157. doi: 10.32983/2222-4459-2019-8-150-157

24. Bendovschi, A. (2015). Cyber-Attacks – Trends, Patterns and Security Countermeasures. Procedia Economics and Finance, 28, 24–31. doi: 10.1016/s2212-5671(15)01077-1

25. Kniaz, S., Heorhiadi, N., Sopilnyk, L., Konovalyuk, I., Tyrkalo, Y., Skrynkovskyy, R., Moroz, S., Kalashnyk, O., Khmyz, M., & Kaydrovych, K. (2021). Analysis Algorithm And Factors Of International Economic Activity In The Coordinate System Of Enterprises' Organizational Development. Proceedings of the 38th International Business Information Management Association (IBIMA). 3–4 November 2021, Seville, Spain, 923–931.

26. Skrynkovskyy, R., Pawlowski, G., Harasym, P., & Koropetskyi, O. (2017). Cybernetic Security and Business Intelligence in the System of Diagnostics of Economic Security of the Enterprise. Path of Science, 3(10), 5001–5009. doi: 10.22178/pos.27-6


Article Metrics

Metrics Loading ...

Metrics powered by PLOS ALM

Refbacks

  • There are currently no refbacks.




Copyright (c) 2024 Roman Mysiuk, Oleksii Kononenko, Andriy Svystovych, Oleksii Ozhyhov, Nazar Osadets, Yuriy Kuchmak, Andrii Pohrebniak, Yuriy Honsor

Creative Commons License
This work is licensed under a Creative Commons Attribution 4.0 International License.