Credit Fraud Detection for the course project for the master's degree in Software and Systems Engineering.
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Updated
Oct 2, 2023 - Jupyter Notebook
Credit Fraud Detection for the course project for the master's degree in Software and Systems Engineering.
Developed and evaluated machine learning and deep learning models for detecting financial fraud.
ML-FinFraud-Detector is a machine learning project for detecting financial transaction fraud. Utilizing XGBoost, precision-recall, and ROC curves, it provides accurate fraud detection. Explore feature importance, evaluate model performance, and enhance financial security with this comprehensive fraud detection solution.
The Wirecard scandal is considered one of the largest financial scandals of the decade, which caused losses of several billion euros. This analysis examines the digit structure of Wirecard's financial figures in the period from 2005 to 2019 by analyzing the conformity with the expected frequency distributions according to Benford's law. The resu…
Application built for example financial company that predicts if a transaction is fraudulent. Model trained on sample data from kaggle
🛡️ Welcome to our Credit Card Fraud Detection project! 💳 Harnessing the formidable prowess machine learning, we're steadfast in our mission to fortify your financial stronghold against deceitful adversaries. Join our crusade for financial resilience,Ensuring every transaction is securely monitored! 🔐💯
ML model developed using European credit card transaction data to identify suspicious activities.
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