Analisis Default Kartu Kredit Dengan Deep Learning Untuk Mendukung Keputusan Manajemen Keuangan Digital

  • Dini Pratiwi Universitas Serelo Lahat
  • Deki Fujiansyah Universitas Serelo Lahat
Keywords: Default Kartu Kredit, Deep Learning, Manajemen Keuangan Digital

Abstract

The development of the digital economy requires financial institutions to optimize risk management through data-driven analysis. This study aims to analyze the factors influencing credit card default and to develop a predictive model using a Deep Learning algorithm based on an Artificial Neural Network (ANN) to support digital financial management decision-making. The data were obtained from the public “Default of Credit Card Clients” dataset (UCI/Kaggle), consisting of 30,000 observations and 23 financial variables. The results show that the model achieved an accuracy of 81.6% and an AUC value of 0.771, with high specificity but relatively low recall. These findings indicate that deep learning is effective in capturing non-linear patterns in customer payment behavior and can serve as a decision support tool for digital financial institutions in identifying credit risk and designing more adaptive default mitigation strategies.

Downloads

Download data is not yet available.
Published
2026-04-07
How to Cite
Pratiwi, D., & Fujiansyah, D. (2026). Analisis Default Kartu Kredit Dengan Deep Learning Untuk Mendukung Keputusan Manajemen Keuangan Digital. Jurnal Akuntansi, Manajemen Dan Bisnis Digital, 5(2), 491-498. https://doi.org/10.37676/jambd.v5i2.10484
Section
Articles