added online-payment-fraud-detection using ml model #659
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sharath4444 wants to merge 5 commits intocharann29:mainfrom
Open
added online-payment-fraud-detection using ml model #659sharath4444 wants to merge 5 commits intocharann29:mainfrom
sharath4444 wants to merge 5 commits intocharann29:mainfrom
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Online Payment Fraud Detection System
This project is an online payment fraud detection system built using Python, a machine learning model (Decision Tree Classifier), and a user-friendly interface using Streamlit. The system predicts whether a transaction is fraudulent or not based on transaction details such as the type of transaction, amount, and balances.
Project Overview
The main goal of this project is to detect potentially fraudulent transactions in real-time. The system allows users to input transaction details, and based on the trained model, it predicts whether the transaction is likely fraudulent or not.
Features