Have a personal or library account? Click to login
Time Series Analysis of Bikes Sales Dataset in JASP Cover

References

  1. Albeladi, K., Zafar, B., & Mueen, A. (2023). A Novel Deep-learning based Approach for Time Series Forecasting using SARIMA, Neural Prophet, and Fb Prophet. arXiv preprint arXiv:2111.15397
  2. Aleksandrova, Y., & Armianova, M. (2022). Evaluation of cost-sensitive machine learning methods for default credit prediction. International Conference Automatics and Informatics, ICAI 2022 - Proceedings, 89–94. https://doi.org/10.1109/ICAI55857.2022.9960023
  3. Aleksandrova, Y. (2019). Predicting students performance in Moodle platforms using machine learning algorithms. In Conferences of the department Informatics (No. 1, pp. 177-187). Publishing house Science and Economics Varna.
  4. Ana-Maria Ramona, S., Marian Pompiliu, C., & Stoyanova, M. (2020). Data mining algorithms for knowledge extraction. In Challenges and Opportunities to Develop Organizations Through Creativity, Technology and Ethics: The 2019 Griffiths School of Management Annual Conference on Business, Entrepreneurship and Ethics (GSMAC) (pp. 349-357). Springer International Publishing.
  5. Armyanova, M., & Aleksandrova, Y. (2023, December). Design patterns in machine learning. In AIP Conference Proceedings (Vol. 2938, No. 1). AIP Publishing.
  6. Boychev, B. (2020). Organizational and Methodological Issues of Using Infrastructure as a Service. Monographic Library “Knowledge and Business” Varna. https://ideas.repec.org/b/kab/monogr/7.html
  7. Boychev, B. (2021). Marketing aspects of dark tourism. Monographic Library “Knowledge and Business” Varna. https://ideas.repec.org/b/kab/monogr/16.html
  8. Boychev, B. (2024). Marketing Tools With Artificial Intelligence. Conferences of the Department Informatics, 2024•informatics.Ue-Varna.Bg, 71–75. https://informatics.uevarna.bg/conference/Proceedings2024.pdf#page=72
  9. Brykin, D. (2024). Sales Forecasting Models: Comparison between ARIMA, LSTM, and Prophet. Journal of Computer Science, 20(10), 1222-1230
  10. Döring, L., Grumbach, F., & Reusch, P. (2024). Optimizing Sales Forecasts through Automated Integration of Market Indicators. arXiv preprint arXiv:2406.07564.
  11. Georgescu, M. R., Stoica, E. A., Bogoslov, I. A., & Lungu, A. E. (2022). Managing Efficiency in Digital Transformation - EU Member States Performance during the COVID-19 Pandemic. Procedia Computer Science, 204, 432–439. https://doi.org/10.1016/j.procs.2022.08.053
  12. Georgieva, H. (2024). Characteristics and analysis of the Culture and Arts sector, specifically the Performing dance sector in Bulgaria. Business & Management Compass, 68(1), 5-13.
  13. Hasan et al (2022). A Comparative Study on Forecasting of Retail Sales. arXiv preprint arXiv:2203.06848. (arxiv.org)
  14. Hristova, I. (2024). Optimizing Cloud Data Management With Ai-Driven Solutions. In Conferences of the department Informatics (No. 1, pp. 162-168). Publishing house Science and Economics Varna. Retrieved from https://informatics.ue-varna.bg/ICTBE2024/ICTBE2024_162-168.pdf
  15. Kuyumdzhiev, I., & Petrov, P. (2024). Virtualization and Online Engineering of the Administrative Services in Universities. International Journal of Online & Biomedical Engineering, 20(1).
  16. Kwarteng, S. B., & Andreevich, P. A. (2024). Comparative Analysis of ARIMA, SARIMA, and Prophet Model in Forecasting. Research & Development, 5(4), 110-120.
  17. Mileva, L. (2024). Big data predictions of Seasonal Fluctuations in Marine Traffic (using AIS data) by monitoring idle ships. Business & Management Compass, 68(4), 5-22. Retrieved from https://bi.ue-varna.bg/ojs/index.php/bmc/article/download/83/22/457
  18. Miryanov, R., & Chalakova, K. (2019). One Type of Problems with Infinite Number of Cube Roots. Math. Inform, 62, 284-289.
  19. Nacheva, R. (2024). An Emotions Mining Approach To Support Artificial Intelligence Systems. In Conferences of the department Informatics (No. 1, pp. 92-104). Publishing house Science and Economics Varna. Retrieved from https://informatics.ue-varna.bg/ICTBE2024/ICTBE2024_92-104.pdf
  20. Nikolaev, R., Milkova, T., & Miryanov, R. (2018). A New Meaning of the Notion “Expansion of a Number”. Mathematics and Informatics, 61(6), 596-602.
  21. Parusheva, S., & Pencheva, D. (2021). Modeling a Business Intelligent System for Managing Orders to Supplier in the Retail Chain with Unified Model Language. In Digital Transformation Technology: Proceedings of ITAF 2020 (pp. 375-393). Singapore: Springer Singapore.
  22. Penchev, B. (2024). A Study On The Usage Of M-Learning Applications Within Bulgarian Schools. Business & Management Compass, 68(1), 45-53.
  23. Petrov, P., Ivanov, S., Aleksandrova, Y., Dimitrov, G., & Ovacikli, A. K. (2020). Opportunities to use virtual tools in start-up fintech companies. 20th International Multidisciplinary Scientific GeoConference Proceedings SGEM 2020, Informatics, Geoinformatics and Remote Sensing, 20, 247–254. https://doi.org/10.5593/sgem2020/2.1/s07.032
  24. Raychev, T. (2018). Assessment of canceled and problematic concession projects in the water supply and sewerage sector worldwide (in Bulgarian). Journal of the Union of Scientists, 7(3), 184–195.
  25. Raychev, T. (2020). Assessment of structural changes of concessions in the water and sewerage sector. Economics and Computer Science, 6(1), 92–123
  26. Simeonidis, D., Petrov, P., Penchev, G., Petrova, S., Dimitrov, G., & Petrivskyi, V. (2024, October). Performance and Accuracy Assessment of Detecting Network Intrusions with eSOM-Based Techniques. In 2024 International Conference Automatics and Informatics (ICAI) (pp. 586-591). IEEE.
  27. Stoyanova, M. (2020). Good practices and recommendations for success in construction digitalization. TEM Journal, 9(1), 42-47.
  28. Stoyanova, M. (2021). Potential Applications of Blockchain Technology in the Construction Sector. Data Science in Engineering and Management, 35–48. https://doi.org/10.1201/9781003216278-4/POTENTIAL-APPLICATIONS-BLOCKCHAIN-TECHNOLOGY-CONSTRUCTION-SECTOR-MIGLENASTOYANOVA
  29. Sulova, S. (2016). An approach for automatic analysis of online store product and services reviews. Izvestiya. Journal of Varna University of Economics, 60(4), 455-467.
  30. Sulova, S., Aleksandrova, Y., Stoyanova, M., & Radev, M. (2022, June). A Predictive Analytics Framework Using Machine Learning for the Logistics Industry. In Proceedings of the 23rd International Conference on Computer Systems and Technologies (pp. 39-44).
  31. Sulova, S., & Bankov, B. (2019). Approach for social media content-based analysis for vacation resorts. Journal of Communications Software and Systems, 15(3), 262-271.
  32. Sulova, S., & Marinova, O. (2024). Metadata Management Framework For Business Intelligence Driven Data Lakes. Business Management/Biznes Upravlenie, (2).
  33. Todoranova, L., Nacheva, R., Sulov, V., & Penchev, B. (2020). A model for mobile learning integration in higher education based on students’ expectations. International Journal of Interactive Mobile Technologies (iJIM), Wien: International Association of Online Engineering (IAOE), 14, 2020, 11, 171 - 182.
  34. Zhechev, V. (2024). A dive into the marketing trends of 2024: insights to unlocking potential. Business & Management Compass, 68(1), 54-65.
  35. Zunic, E., Korjenic, K., Hodzic, K., & Donko, D. (2020). Application of Facebook’s Prophet Algorithm for Successful Sales Forecasting Based on Real-world Data. International Journal of Computer Science & Information Technology, 12(2), 23-34
  36. Zunic et al (2021). Comparison Analysis of Facebook’s Prophet, Amazon’s DeepAR+ and CNNQR Algorithms for Successful Real-World Sales Forecasting. arXiv preprint arXiv:2105.00694
Language: English
Page range: 1072 - 1087
Published on: Jul 24, 2025
Published by: Bucharest University of Economic Studies
In partnership with: Paradigm Publishing Services
Publication frequency: 1 issue per year

© 2025 Julian Vasilev, Teodora Daneva, Silvia Momcheva, published by Bucharest University of Economic Studies
This work is licensed under the Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 License.