Javascript must be enabled to continue!
Enhancing Credit Risk Assessment in Germany: A GAN-Based Approach with Forward-Looking Variables
View through CrossRef
Background and Aim: Credit consumption has become a cornerstone of modern economies, making accurate credit evaluation essential to minimizing loan default risks. However, existing credit scoring systems face several challenges, including data imbalance, inefficient sample ratios, and the need for more precise indicator weighting. This study aims to enhance credit scoring for German credit card users by addressing these issues and integrating forward-looking variables to improve prediction accuracy and model stability.
Materials and Methods: This research utilizes the UCI Statlog (German Credit Data) dataset, employing a preprocessing pipeline that includes normalization, encoding, and data augmentation via Generative Adversarial Networks (GANs) to address data imbalance. The GAN-based model applies SoftMax classification to predict defaults while utilizing principal component analysis (PCA) combined with macroeconomic and industry-specific variables to enhance the adaptability of the model.
Results: Compared with traditional oversampling methods, GAN can generate samples that are closer to the true data distribution, thereby avoiding overfitting and data distortion. The GAN-based model significantly improved predictive accuracy, increasing overall accuracy from 74.25% to 87.92% following data augmentation. The integration of forward-looking variables further enhanced model performance, demonstrating the potential of GANs and dynamic economic factors in credit scoring.
Conclusion: This study proposes an advanced credit scoring system that, compared to existing models in the German market, effectively alleviates data imbalance and improves prediction accuracy by enhancing and introducing future variables based on GAN. The findings suggest that GANs can serve as a powerful tool in credit risk assessment, particularly in cases where labeled data is limited. Future research should explore the scalability of this approach across various financial risk prediction tasks.
Dr. Ken Institute of Academic Development and Promotion
Title: Enhancing Credit Risk Assessment in Germany: A GAN-Based Approach with Forward-Looking Variables
Description:
Background and Aim: Credit consumption has become a cornerstone of modern economies, making accurate credit evaluation essential to minimizing loan default risks.
However, existing credit scoring systems face several challenges, including data imbalance, inefficient sample ratios, and the need for more precise indicator weighting.
This study aims to enhance credit scoring for German credit card users by addressing these issues and integrating forward-looking variables to improve prediction accuracy and model stability.
Materials and Methods: This research utilizes the UCI Statlog (German Credit Data) dataset, employing a preprocessing pipeline that includes normalization, encoding, and data augmentation via Generative Adversarial Networks (GANs) to address data imbalance.
The GAN-based model applies SoftMax classification to predict defaults while utilizing principal component analysis (PCA) combined with macroeconomic and industry-specific variables to enhance the adaptability of the model.
Results: Compared with traditional oversampling methods, GAN can generate samples that are closer to the true data distribution, thereby avoiding overfitting and data distortion.
The GAN-based model significantly improved predictive accuracy, increasing overall accuracy from 74.
25% to 87.
92% following data augmentation.
The integration of forward-looking variables further enhanced model performance, demonstrating the potential of GANs and dynamic economic factors in credit scoring.
Conclusion: This study proposes an advanced credit scoring system that, compared to existing models in the German market, effectively alleviates data imbalance and improves prediction accuracy by enhancing and introducing future variables based on GAN.
The findings suggest that GANs can serve as a powerful tool in credit risk assessment, particularly in cases where labeled data is limited.
Future research should explore the scalability of this approach across various financial risk prediction tasks.
Related Results
Highmobility AlGaN/GaN high electronic mobility transistors on GaN homo-substrates
Highmobility AlGaN/GaN high electronic mobility transistors on GaN homo-substrates
Gallium nitride (GaN) has great potential applications in high-power and high-frequency electrical devices due to its superior physical properties.High dislocation density of GaN g...
Studies on the Influences of i-GaN, n-GaN, p-GaN and InGaN Cap Layers in AlGaN/GaN High-Electron-Mobility Transistors
Studies on the Influences of i-GaN, n-GaN, p-GaN and InGaN Cap Layers in AlGaN/GaN High-Electron-Mobility Transistors
Systematic studies were performed on the influence of different cap layers of i-GaN, n-GaN, p-GaN and InGaN on AlGaN/GaN high-electron-mobility transistors (HEMTs) grown on sapphi...
Credit Risk Management of Jamuna Bank Limited
Credit Risk Management of Jamuna Bank Limited
Banks are exposed to five core risks through their operation, which are – credit risk, asset/liability risk, foreign exchange risk, internal control & compliance risk, and mone...
Jaminan Kredit Pada Perjanjian Kredit Sindikasi
Jaminan Kredit Pada Perjanjian Kredit Sindikasi
Credit Guarantee in the Syndicated Bank Credit Agreement is the most important guarantee in the Syndicated Credit Agreement which is the main discussion in this Legal Writing. The ...
An analysis of customer-based and supplier-based trade credit gaps
An analysis of customer-based and supplier-based trade credit gaps
PurposeThis paper aims to examine the customer-based and supplier-based trade credit gaps for USA firms from 1970 to 2020.Design/methodology/approachThe authors' study examines USA...
Analysis of Internal Control System In Granting Credit In Pt. Bank Mandiri KCP Medan Belawan
Analysis of Internal Control System In Granting Credit In Pt. Bank Mandiri KCP Medan Belawan
This study aims to analyze the internal control system in providing credit at pt. Bank Mandiri KCP Medan Belawan and what actions were taken by the relevant departments in overcomi...
Comparison of Credit Risk Management Practices among Islamic and Public Commercial Bank’s in Pakistan
Comparison of Credit Risk Management Practices among Islamic and Public Commercial Bank’s in Pakistan
The main objective of this research is to explain a topic in credit risk management practices. Furthermore, this research evaluates credit risk management practices in Pakistani ba...
Credit Risk Identification and Prevention Strategies of Small and Medium-sized Banks Based on Big Data Technology
Credit Risk Identification and Prevention Strategies of Small and Medium-sized Banks Based on Big Data Technology
The topic of this analysis is the application of big data technology to improve credit risk identification and prevention measures in SME banks. T¬he research, it highlights credit...

