This repository contains the code and datasets for our paper, "A Systematic Survey and Empirical Comparison of Hybrid Methods for Imbalanced Fraud Detection: Combining Resampling and Machine Learning," published in the AUT Journal of Mathematics and Computing.
Fraud detection faces a critical hurdle: severe class imbalance. Our work systematically explores hybrid frameworks that combine resampling techniques with machine learning to overcome this challenge.
- Access the Paper: https://ajmc.aut.ac.ir/article_5913.html
- Comprehensive survey of hybrid imbalance learning methods.
- Rigorous empirical study on auto insurance fraud data.
- Open-source code for reproducibility and further research.
- Evidence that resampling strategy profoundly impacts model performance.
If you use this research, please cite our paper as follows:
Yousefimehr, B., Ghatee, M. (2026). 'A systematic survey and empirical comparison of hybrid methods for imbalanced fraud detection: Combining resampling and machine learning', AUT Journal of Mathematics and Computing, 7(1), pp. 85-116. doi: 10.22060/ajmc.2025.24642.1446