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Enhancing Imbalanced Data Augmentation: A Comparative Study of GANified-SMOTE and Latent Factor Integration

Rusma Anieza Ruslan et al · MMU Press · 2025

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One such serious problem in machine learning (ML) is imbalanced datasets. Minority class samples are usually sparse but hold significant meaning. The model can become biased toward the majority class due to unbalanced class distribution. This results in fraudulently high accuracy without being able to detect minority cases. This bias is also most perilous in critical applications, where ignoring minority cases can be highly destructive. To overcome this problem, the Synthetic Minority Oversampling Technique (SMOTE) is one of the most widely used. SMOTE creates balanced class distribution by interpolating between existing minority samples. It creates samples that are too close to one another and can lead to overfitting and limit the generalization of the model. Recent advancements in generative modeling, especially Generative Adversarial Networks (GANs), offer a more effective solution to handle class imbalance. GANs utilizes a generative discriminator structure to produce synthetic data highly similar to real data. A hybrid technique called GANified-SMOTE combines the power of SMOTE with the generation power of GANs to produce more diverse and realistic minority class samples. The technique improves the model strength and eliminates the limitations of traditional oversampling. This paper presents the incorporation of latent factors into the architecture of GANified-SMOTE framework. Latent variables reveal hidden structures and relations in the data, leading to a closer synthetic sample and improving classification accuracy. By incorporating latent factors, this research aims to build a better oversampling method for imbalanced classification sets.

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APA 7

al, R. A. R. E. (2025). Enhancing Imbalanced Data Augmentation: A Comparative Study of GANified-SMOTE and Latent Factor Integration. https://journals.mmupress.com/index.php/jiwe/article/view/2167

MLA

al, Rusma Anieza Ruslan et. "Enhancing Imbalanced Data Augmentation: A Comparative Study of GANified-SMOTE and Latent Factor Integration." 2025. https://journals.mmupress.com/index.php/jiwe/article/view/2167.

Chicago

al, Rusma Anieza Ruslan et. 2025. "Enhancing Imbalanced Data Augmentation: A Comparative Study of GANified-SMOTE and Latent Factor Integration.". https://journals.mmupress.com/index.php/jiwe/article/view/2167.

Harvard

al, R. A. R. E. 2025, Enhancing Imbalanced Data Augmentation: A Comparative Study of GANified-SMOTE and Latent Factor Integration, MMU Press, available at: https://journals.mmupress.com/index.php/jiwe/article/view/2167 [Accessed 28 Jun. 2026].

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Título
Enhancing Imbalanced Data Augmentation: A Comparative Study of GANified-SMOTE and Latent Factor Integration
Autor / colaboradores
Rusma Anieza Ruslan et al
Editorial
MMU Press
Año de publicación
2025
ISSN
2821-370X
ISSN
2821-370X
Idioma
eng

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