← Volver a resultados
Ficha bibliográfica · Consulta y acceso
Artículo

Enhancing Fraud Detection in Financial Transactions using LightGBM and Random Forest

Wan-Ping Khor et al · MMU Press · 2026

Acceso abierto al texto completo
Lectura rápida. Revisá los datos básicos del recurso y luego accedé al contenido desde el botón principal. En esta ficha solo se muestra la información necesaria para identificar la obra, citarla y abrirla.

Acceso al recurso

Entrá al contenido desde la opción principal o elegí otra fuente disponible.

Acceso principal

Acceso abierto al texto completo

DOAJ DOAJ - Open Access Journals
Texto completo identificado como acceso abierto.
Abrir texto

Resumen

Descripción general del contenido del recurso.

In recent years, the frequency and complexity of financial fraud have been rising and have become an urgent challenge for the global financial system. Traditional rule-based detection methods struggle to cope with new types of fraud, especially in terms of real-time detection, generalization ability, and accuracy. To overcome these limitations, machine learning techniques have gradually emerged as a promising solution for identifying fraudulent transactions with better flexibility and scalability. Based on the publicly available European credit card fraud transaction dataset, this study proposes a hybrid model that combines the advantages of LightGBM and Random Forest, aiming to improve the accuracy, robustness, and interpretability of fraud detection. To handle the severe data imbalance problem (fraud cases accounting for only 0.17%), this study applies a RandomUnderSampling strategy and further enhances model performance through systematic parameter tuning using RandomizedSearchCV and decision threshold optimization. Stratified K-Fold cross-validation is also used to validate model stability. In addition, the model is compared with alternative resampling methods including SMOTE and ADASYN, and the results reaffirm the effectiveness and practicality of the undersampling approach. The final model achieves an overall accuracy of 99%, a recall of 86% on the fraud class, ROC-AUC of 0.9746, and PR-AUC of 0.6639. While the precision is relatively low (13%), it reflects a deliberate strategy of prioritizing fraud detection over false positives. This hybrid approach demonstrates a good balance between detection performance and practicality, offering better interpretability and lower computational cost compared to many deep learning models.

Cómo citar

Elegí el formato que necesitás y copiá la referencia al portapapeles.

APA 7

al, W. P. K. E. (2026). Enhancing Fraud Detection in Financial Transactions using LightGBM and Random Forest. https://journals.mmupress.com/index.php/jiwe/article/view/2127

MLA

al, Wan-Ping Khor et. "Enhancing Fraud Detection in Financial Transactions using LightGBM and Random Forest." 2026. https://journals.mmupress.com/index.php/jiwe/article/view/2127.

Chicago

al, Wan-Ping Khor et. 2026. "Enhancing Fraud Detection in Financial Transactions using LightGBM and Random Forest.". https://journals.mmupress.com/index.php/jiwe/article/view/2127.

Harvard

al, W. P. K. E. 2026, Enhancing Fraud Detection in Financial Transactions using LightGBM and Random Forest, MMU Press, available at: https://journals.mmupress.com/index.php/jiwe/article/view/2127 [Accessed 27 Jun. 2026].

Compartir e imprimir

Guardá la ficha, copiá su enlace permanente o imprimila como PDF.

Exportar referencia

Si usás un gestor bibliográfico, podés exportar el registro en los formatos más comunes.

Detalles del recurso

Información bibliográfica útil para confirmar que se trata del material correcto.

Título
Enhancing Fraud Detection in Financial Transactions using LightGBM and Random Forest
Autor / colaboradores
Wan-Ping Khor et al
Editorial
MMU Press
Año de publicación
2026
ISSN
2821-370X
ISSN
2821-370X
Idioma
eng

Materias

Explorá otros recursos relacionados a partir de estas materias.

Copiado