END-TO-END AI SOLUTION FOR UPI FRAUD MONITORING

Ramyasree S, Amulya B, Pujan Kumar B, Chandra Prakash Reddy B, Tharun B

Abstract


With the rapid adoption of Unified Payments Interface (UPI) for digital transactions, the risk of fraudulent activities has also increased significantly. To address this challenge, we propose a novel approach to detect UPI fraud by analyzing transaction details such as the bank book name, transaction ID, and transaction amount. Our method employs three machine learning algorithms: Random Forest, K-Nearest Neighbors (KNN), and Decision Tree. The system operates by processing provided transaction details to classify the transaction outcome as either "Transaction Failed: Incorrect Details Entered" or "Transaction Successful: Details Verified and Processed." Experimental evaluation suggests that these algorithms effectively distinguish between genuine and fraudulent transactions, demonstrating high accuracy and potential for integration into real-world financial systems to provide users with an additional layer of protection against unauthorized activities.

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