Akhil1409906/Medical-Insurance-Fraud-Detection-Using-Machine-Learning-Techniques
Leveraging Logistic Regression and machine learning, this project detects medical insurance fraud by classifying claims as fraudulent or legitimate. The model is deployed using Flask, with a user interface built in HTML and CSS, offering real-time predictions for efficient fraud detection.
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Feb 27, 2025
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