Analisis Klasifikasi Pengaruh Kegagalan dan Keterbatasan Metode Pembayaran Digital terhadap Churn Pelanggan Menggunakan Decision Tree

Authors

  • Dewa Ayu Putu Angelina Dewi Institut Bisnis Dan Teknologi Indonesia
  • I Wayan Sudiarsa Institut Bisnis Dan Teknologi Indonesia
  • Ni Made Dwi Junita Sariyani Institut Bisnis Dan Teknologi Indonesia
  • Yuvensia Armelia Sumu Institut Bisnis Dan Teknologi Indonesia
  • Gusti Ngurah Abhimanyu Institut Bisnis Dan Teknologi Indonesia

DOI:

https://doi.org/10.61132/jubid.v3i1.1232

Keywords:

Classification Analysis, Customer Churn, Decision Tree, Digital Payment, E-commerce

Abstract

The rapid development of digital technology has led to an increased adoption of digital payment methods in online transaction-based businesses. However, in practice, failures and limitations in the implementation of digital payment systems still occur, potentially disrupting transaction processes and reducing customer convenience. Payment related obstacles may result in transaction cancellations and increase the risk of customer churn. This study aims to analyze the impact of failures and limitations in digital payment methods on customer churn using a classification-based approach. The data used in this research are secondary e-commerce customer data obtained from the Kaggle platform, including transaction information, payment methods, customer behavior, and historical transaction records. The research methodology consists of data preprocessing, time-based feature engineering, and classification modeling using logistic regression, decision tree, and random forest algorithms. Model performance is evaluated using accuracy, precision, recall, F1-score, and confusion matrix metrics. The results indicate that the decision tree model demonstrates superior capability in identifying churn customers compared to the other models, although it does not always achieve the highest accuracy. In addition to digital payment methods, other factors such as purchase value, transaction frequency, purchase timing patterns, and product return rates also influence customer churn. The findings highlight the importance of optimizing digital payment systems as part of customer experience enhancement strategies and customer retention efforts in online transaction–based businesses.

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References

Budiyono, A. (2025). Customer churn prediction uses machine learning to improve retention on digital platforms. Journal of Digital Business and Data Science, 2(2), 55–75. https://doi.org/10.59261/jdbs.v2i2.23

Gong, S., & Zeng, L. (2014). The solution of safety of electronic cash in e-commerce under cloud computing environment. Advanced Materials Research, 989–994, 4314–4317. https://doi.org/10.4028/www.scientific.net/amr.989-994.4314

Hassan, M., Shukur, Z., Hasan, M., & Al-Khaleefa, A. (2020). A review on electronic payments security. Symmetry, 12(8), 1344. https://doi.org/10.3390/sym12081344

Humphrey, D., Willesson, M., Bergendahl, G., & Lindblom, T. (2006). Benefits from a changing payment technology in European banking. Journal of Banking & Finance, 30(6), 1631–1652. https://doi.org/10.1016/j.jbankfin.2005.09.009

Jusman, J., & Fauziah, I. (2024). Receptiveness of QRIS as a digital payment among MSME in Palopo City. Interdisciplinary Journal and Humanity (Injurity), 3(10), 718–728. https://doi.org/10.58631/injurity.v3i10.1234

Keramati, A., Ghaneei, H., & Mirmohammadi, S. (2016). Developing a prediction model for customer churn from electronic banking services using data mining. Financial Innovation, 2(1). https://doi.org/10.1186/s40854-016-0029-6

Patil, S. (2025). Predicting customer churn in the telecom industry with machine learning techniques for improved retention strategies. 142–152. https://doi.org/10.2174/9798898812102125030013

Ramesh, K., Amudha, R., Prasob, K., & Kanna, K. (2023). Fintech innovations in e-payments: Privacy and security in cybercrime threats. Multidisciplinary Science Journal, 5, 2023ss0320. https://doi.org/10.31893/multiscience.2023ss0320

Ramli, A., Mazlan, N., Harun, Z., & Yusof, Y. (2024). Factors influencing customers on the use of e-payment in Klang Valley. Information Management and Business Review, 16(2(I)S), 18–23. https://doi.org/10.22610/imbr.v16i2(i)s.3765

Sahi, A. M., Khalid, H., & Abbas, A. F. (2021). Digital payment adoption: A review (2015–2020). Journal of Management Information and Decision Sciences, 24(6).

Saleh, S., & Saha, S. (2023). Customer retention and churn prediction in the telecommunication industry: A case study on a Danish university. SN Applied Sciences, 5(7). https://doi.org/10.1007/s42452-023-05389-6

Simatupang, S., Grace, E., Nainggolan, C. D., & Ervina, N. (2024). Pembayaran e-payment serta pengaruhnya terhadap keputusan pembelian di e-commerce. Journal of Innovation Research and Knowledge (JIRK), 4(1).

Wang, Y., & Sarkis, J. (2021). Emerging digitalisation technologies in freight transport and logistics: Current trends and future directions. Transportation Research Part E: Logistics and Transportation Review, 148, 102291. https://doi.org/10.1016/j.tre.2021.102291

Wijaya, A. S., Nugroho, R. Y., & Abadi, M. (2023). Penggunaan metode e-payment terhadap kegiatan jual beli pada mahasiswa di Jakarta. JURNALKU, 3(2), 151–162.

Wu, G., Yang, J., & Hu, Q. (2022). Research on factors affecting people’s intention to use digital currency: Empirical evidence from China. Frontiers in Psychology, 13. https://doi.org/10.3389/fpsyg.2022.928735

Yakean, S. (2020). e-payment system drive Thailand to be a cashless society. Review of Economics and Finance, 18, 87–91. https://doi.org/10.55365/1923.x2020.18.10

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Published

2026-02-13

How to Cite

Dewa Ayu Putu Angelina Dewi, I Wayan Sudiarsa, Ni Made Dwi Junita Sariyani, Yuvensia Armelia Sumu, & Gusti Ngurah Abhimanyu. (2026). Analisis Klasifikasi Pengaruh Kegagalan dan Keterbatasan Metode Pembayaran Digital terhadap Churn Pelanggan Menggunakan Decision Tree. Jurnal Bisnis Inovatif Dan Digital, 3(1), 16–26. https://doi.org/10.61132/jubid.v3i1.1232