VAN SON - Google Patents
SEMI-SUPERVISED LEARNING FOR IMBALANCED CLASSIFICATION WITH LABEL SCARCITY IN THE DOMAIN OF FINANCIAL FRAUD DETECTIONVAN SON
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- 14725448945690974500
- Author
- VAN SON L
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The application of statistical methods for financial fraud detection often appears to be hampered by label scarcity and existing class imbalance within the utilized dataset. Now, semi-supervised learning has shown to be potentially effective in mitigating negative …
- 238000001514 detection method 0 title abstract description 27
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