Deepak3517/fraud-detection-kmeans-paysim
K-Means clustering on 6.3M financial transactions to discover hidden fraud patterns. Unsupervised model identified a high-risk cluster with 7x higher fraud rate — without any labels.
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Mar 24, 2026
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