Fraud detection framework combining GAN oversampling with heterogeneous GNNs to tackle class imbalance. (IEEE ICASSP 2024)
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Updated
Dec 12, 2025 - Python
Fraud detection framework combining GAN oversampling with heterogeneous GNNs to tackle class imbalance. (IEEE ICASSP 2024)
This repository contains a collection of Jupyter Notebook files for various feature engineering techniques, including missing value handling, encoding, transformation, imbalanced dataset, and outlier detection. Each notebook provides practical examples of methods for handling the corresponding problem.
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