Kyungseop0206/early-default-detection
This project builds an early stage credit default detection model using only application data, intended to serve as a fast prescreening filter before any extra document submission, external bureau checks, ore manual review, enhancing customer experience while maintaining low financial risk in online lending.
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Last pushed
Mar 19, 2026
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