Skip to main content
Have a personal or library account? Click to login
Predicting Future E-Commerce Purchases from Multi-Visit Sequences and Behavioural Micro-Interactions Cover

Predicting Future E-Commerce Purchases from Multi-Visit Sequences and Behavioural Micro-Interactions

Open Access
|Jun 2026

References

  1. J. A. Bastos, M. I. Bernardes, Understanding Online Purchases with Explainable Machine Learning, Information, vol. 15, no. 10, art. 587, 2024.
  2. J. Bilski, B. Kowalczyk, L. Dymova, M. Xiao, Accelerating Neural Network Training with FSGQR: A Scalable and High-Performance Alternative to Adam. Journal of Artificial Intelligence and Soft Computing Research, 15(2), 2025. doi:10.2478/jaiscr-2025-0006.
  3. N. Chaudhuri, G. Gupta, V. Vamsi, I. Bose, On the platform but will they buy? Predicting customers’ purchase behavior using deep learning, Decision Support Systems, vol. 149, 113622, 2021.
  4. S. Chen, X. Wang, H. Zhang, J. Wang, Customer purchase prediction from the perspective of imbalanced data: A machine learning framework based on factorization machine, Expert Systems with Applications, vol. 173, 114756, 2021.
  5. S. Chen, Z. Xu, D. Xu, X. Gou, Customer purchase prediction in B2C e-business: A systematic review and future research agenda, Expert Systems with Applications, vol. 252, 124261, 2024.
  6. F. Ehsani, M. Hosseini, Customer purchase prediction in electronic markets from clickstream data using the Oracle meta-classifier, Operational Research, vol. 24, no. 1, art. 11, 2024.
  7. R. Esmeli, M. Bader-El-Den, H. Abdullahi, Towards early purchase intention prediction in online session based retailing systems, Electronic Markets, vol. 31, no. 3, pp. 697–715, 2021.
  8. M. Gabryel, M. Kocić, A. Gabryel Prediction of Future Customer Purchases in an Online Store Based on Web Session Behavioral Data, In: Proceedings in The 25th International Conference on Artificial Intelligence and Soft Computing 2026, accepted for publication.
  9. M. Gabryel, K. Grzanek, Y. Hayashi. Browser fingerprint coding methods increasing the effectiveness of user identification in the web traffic. Journal of Artificial Intelligence and Soft Computing Research 10.4, pp. 243-253, 2020.
  10. M. Gabryel, E. Kocić, M. Kocić, Z. Patora-Wysocka, M. Xiao, M. Pawlak, Accelerating User Profiling in E-Commerce Using Conditional GAN Networks for Synthetic Data Generation, Journal of Artificial Intelligence and Soft Computing Research, vol. 14, no. 4, 2024.
  11. L. Grinsztajn, E. Oyallon, G. Varoquaux, Why do tree-based models still outperform deep learning on typical tabular data?, in Advances in Neural Information Processing Systems 35, 2022.
  12. W.-C. Kang, J. McAuley, Self-Attentive Sequential Recommendation, in Proceedings of the IEEE International Conference on Data Mining (ICDM), pp. 197–206, 2018.
  13. S. Kim, W. Shin, H.-W. Kim, Predicting online customer purchase: The integration of customer characteristics and browsing patterns, Decision Support Systems, vol. 177, 114105, 2024.
  14. D. Koehn, S. Lessmann, M. Schaal, Predicting online shopping behaviour from clickstream data using deep learning, Expert Systems with Applications, vol. 150, 113342, 2020.
  15. Martínez, C. Schmuck, S. Pereverzyev Jr., C. Pirker, M. Haltmeier, A machine learning framework for customer purchase prediction in the non-contractual setting, European Journal of Operational Research, vol. 281, no. 3, pp. 588–596, 2020.
  16. Requena, G. Cassani, J. Tagliabue, C. Greco, L. Lacasa, Shopper intent prediction from clickstream e-commerce data with minimal browsing information, Scientific Reports, vol. 10, 16983, 2020.
  17. M. Romaszewski, P. Sekuła, P. Głomb, M. Cholewa, K. Kołodziej, Through the Thicket: A Study of Number-Oriented LLMs Derived from Random Forest Models. Journal of Artificial Intelligence and Soft Computing Research, 15(3), 2025, doi:10.2478/jaiscr-2025-0014.
  18. C. O. Sakar, S. O. Polat, M. Katircioglu, Y. Kastro, Real-time prediction of online shoppers’ purchasing intention using multilayer perceptron and LSTM recurrent neural networks, Neural Computing and Applications, vol. 31, pp. 6893–6908, 2019.
  19. R. Shwartz-Ziv, A. Armon, Tabular data: Deep learning is not all you need, Information Fusion, vol. 81, pp. 84–90, 2022.
  20. F. Sun, J. Liu, J. Wu, C. Pei, X. Lin, W. Ou, P. Jiang, BERT4Rec: Sequential Recommendation with Bidirectional Encoder Representations from Transformer, in Proceedings of the 28th ACM International Conference on Information and Knowledge Management (CIKM), pp. 1441–1450, 2019.
  21. H. Vaghari, M. Hosseinzadeh Aghdam, H. Emami, Diarec: Dynamic intention-aware recommendation with attention-based context-aware item attributes modeling, Journal of Artificial Intelligence and Soft Computing Research, vol. 14, no. 2, 2024.
  22. C. Zhang, J. Liu, S. Zhang, Online Purchase Behavior Prediction Model Based on Recurrent Neural Network and Naive Bayes, Journal of Theoretical and Applied Electronic Commerce Research, vol. 19, no. 4, pp. 3461-3476, 2024.
Language: English
Page range: 412 - 433
Submitted on: Jan 12, 2026
Accepted on: May 22, 2026
Published on: Jun 29, 2026
Published by: SAN University
In partnership with: Paradigm Publishing Services

© 2026 Marcin Gabryel, Milan Kocić, Aleksandra Gabryel, Marek Kisiel-Dorohonicki, Zofia Patora-Wysocka, published by SAN University
This work is licensed under the Creative Commons Attribution 4.0 License.