divyansh10100/credit-card-fraud-using-SMOTE
Credit card frauds cost a lot to the banks as well as the customers. Here we compare various machine learning algorithms to find the best one in detecting credit card frauds. The dataset is highly imbalanced, therefore we use a technique known as SMOTE to generate synthetic data
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