Bank card fraud detection using machine learning. Web application using Streamlit framework
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Updated
Jun 26, 2024 - Python
Bank card fraud detection using machine learning. Web application using Streamlit framework
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Fraud Detection for e-commerce and Bank Transactions
To identify online payment fraud with machine learning, we need to train a machine learning model for classifying fraudulent and non-fraudulent payments. For this, we need a dataset containing information about online payment fraud, so that we can understand what type of transactions lead to fraud.
🛡️ 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! 🔐💯
This project demonstrates the use of a Self-Organizing Map (SOM) for fraud detection in a dataset. The dataset contains transaction records, and the goal is to identify potential fraudulent transactions using unsupervised learning techniques.
This project focuses on detecting fraudulent credit card transactions using machine learning techniques. The goal is to predict whether a given transaction is legitimate or fraudulent based on various features of the transaction.
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Built a Fraud Detection System using ANN to identify fraudulent transactions with high accuracy. Optimized feature engineering and model performance, ensuring robust anomaly detection. Documented the process in Jupyter Notebooks for transparency and reproducibility.
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