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Proceedings of the International Conference on Business Excellence
Volume 18 (2024): Issue 1 (June 2024)
Open Access
A Quantitative Analysis of Default Risk Using Machine Learning and SHAP Value Interpretation
Coralia Tanasuica Zotic
Coralia Tanasuica Zotic
| Jul 03, 2024
Proceedings of the International Conference on Business Excellence
Volume 18 (2024): Issue 1 (June 2024)
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Published Online:
Jul 03, 2024
Page range:
233 - 245
DOI:
https://doi.org/10.2478/picbe-2024-0020
Keywords
Machine learning
,
Model interpretability
,
Payment Default Prediction
,
Clustering
,
Propensity to pay
,
Bad debt
,
Analytics
© 2024 Coralia Tanasuica (Zotic) et al., published by Sciendo
This work is licensed under the Creative Commons Attribution 4.0 International License.