Applications of Artificial Intelligence in Customer Data Analysis for E-Commerce Systematic Literature Review (2018–2025)
DOI:
https://doi.org/10.65405/cx750x02الملخص
Artificial intelligence (AI) has become a core enabler of customer data analysis in e-commerce, yet existing research remains fragmented across applications, methodologies, and contexts. This study presents a systematic literature review (SLR) of peer-reviewed research published between 2018 and 2025 on AI-based customer data analysis in e-commerce, conducted in accordance with the PRISMA 2020 framework. Following a structured search across Scopus, Web of Science, and Google Scholar and the application of pre-defined inclusion and exclusion criteria, fifteen studies were included in the final synthesis. Thematic analysis identified five interconnected domains of AI application: recommendation systems, sentiment analysis, customer behavior prediction, customer service automation, and privacy and security. Findings indicate a consistent shift from classical statistical methods toward deep learning and transformer-based architectures across all five domains, alongside measurable improvements in personalization, response efficiency, and customer satisfaction. However, the review also identifies significant technical, ethical, and methodological gaps, including limited multilingual and cross-platform support, inconsistent quantitative reporting, and underdeveloped privacy-preserving frameworks. This study contributes an integrated thematic framework and a research agenda comprising seven priority directions, offering practical guidance for e-commerce practitioners and a foundation for future empirical and cross-cultural research.
التنزيلات
المراجع
1. Agboola, O. A., Ogbuefi, E., Abayomi, A. A., Ogeawuchi, J. C., Akpe, O.-E. E., & Owoade, S. (2025). Systematic review of AI-driven data integration for e-commerce customer analytics. MultiResearch Journal, 2023.3.6, 4245. https://www.multiresearchjournal.com/arclist/list-2023.3.6/id-4245
2. Anand. (2024). Leveraging artificial intelligence for enhanced personalization and customer experience in e-commerce. American Scientific Journal, 12(7), 10512. https://asrjetsjournal.org/American_Scientific_Journal/article/view/10512
3. Arshad, O., & Naseeb Khan, S. (2024). Exploring the role of artificial intelligence in enhancing CRM activities within e-commerce: A systematic literature review. In MCIS 2024 Proceedings (Article 28). AIS Network. https://aisel.aisnet.org/mcis2024/28
4. Ayazhan, O. (2025). Application of artificial intelligence in e-commerce. Eurasian Science Review, 12(3), 45–58. https://eurasia-science.org/index.php/pub/article/view/604
5. Chirinos Sánchez, L., Condori, D., & Arnao, R. (2025). Impact of artificial intelligence on the business-to-customer sales processes: A systematic review. LACCEI Proceedings, 13(2), 234–248. https://proceedings.laccei.org/index.php/laccei/article/view/4089
6. Debbah, A., & Lagrini, S. (2024). Latest advances in deep learning based recommender systems. International Journal of Reasoning-based Intelligent Systems, 1(1). https://doi.org/10.1504/IJRIS.2024.10062538
7. Decoding customer sentiments in e-commerce: Techniques and applications. (2024). International Journal of Advanced Engineering Research and Science (IJAERS), 11(8), 22–29. https://ijaers.com/uploads/issue_files/7IJAERS-08202422-Decoding.pdf
8. Endra, S., & Veri, J. (2025). Systematic literature review: Peran artificial intelligence dalam meningkatkan layanan pelanggan pada e-commerce. Indo-Fintech Intellectuals: Journal of Economics and Business, 5(3), 6304–6316. https://doi.org/10.54373/ifijeb.v5i3.3699
9. Gamboa-Cruzado, J., Mosqueira-Cerda, T., Torre Camones, A., Quispe Mendoza, R., Navarro Raymundo, A. F., Jiménez García, J., & López-Ramírez, B. C. (2024). Exploring the influence of machine learning in e-commerce. Cybernetics and Systems, 15(1), 89–102. https://cys.cic.ipn.mx/index.php/CyS/article/viewFile/5749/3939
10. Kitchenham, B., & Charters, S. (2007). Guidelines for performing systematic literature reviews in software engineering (Technical Report EBSE-2007-01). Keele University.
11. Lin, Y. (2025). Artificial intelligence in e-commerce: Applications, challenges and future trends. Frontiers in Electronics, 6(4), 1162. https://lseee.net/index.php/fe/article/view/1162
12. Page, M. J., McKenzie, J. E., Bossuyt, P. M., Boutron, I., Hoffmann, T. C., Mulrow, C. D., & Moher, D. (2021). The PRISMA 2020 statement: An updated guideline for reporting systematic reviews. BMJ, 372, n71. https://doi.org/10.1136/bmj.n71
13. Raza, S., Rahman, M., Kamawal, S., Toroghi, A., Raval, A., Navah, F., & Kazemeini, A. (2024). A comprehensive review of recommender systems: Transitioning from theory to practice (arXiv Preprint No. 2407.13699). arXiv. https://doi.org/10.48550/arXiv.2407.13699
14. Shetty, A. M., & Manjaiah, D. H. (2024). Analyzing sentiments in e-commerce: Techniques, applications and challenges. International Journal of Science and Research Archive, 12(2), 2307–2320. https://doi.org/10.30574/ijsra.2024.12.2.0843
15. Singh, B., & Kumar, V. (2025). Decoding customer sentiments in e-commerce: A review of machine learning and deep learning approaches. International Journal of Advanced Engineering Research and Science, 11(9), 55–66. https://doi.org/10.22161/ijaers.119.7
16. Zhuk, A., & Yatskyi, O. (2023). A bibliometric study from 1995 to 2023 using artificial intelligence and e-commerce keywords. Digital Library Journal, 18(2), 123–145. https://dialnet.unirioja.es/descarga/articulo/9426482.pdf
17. Zhuk, A., & Yatskyi, O. (2024). The use of artificial intelligence and machine learning in e-commerce marketing. Technology Audit and Production Reserves, 3(4(77)), 33–38. https://ideas.repec.org/a/baq/taprar/v3y2024i4p33-38.html
18. Alnnale, T. (2026). From Reactive to Proactive Governance: A Hybrid LSTM–Gradient Boosting Architecture for Real-Time Anomaly Signal Detection in Multi-Store Retail Supply Chain Decision Systems. Al-Farooq Journal of Sciences, 2(1), 987-1005. https://afjs.histr.edu.ly/index.php/afjs/article/view/116











