Credit-Card-Fraud-Detection-using-Autoencoders-in-Keras - iPython notebook and pre-trained model that shows how to build deep Autoencoder in Keras for Anomaly Detection in credit card transactions data

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iPython notebook and pre-trained model that shows how to build deep Autoencoder in Keras for Anomaly Detection in credit card transactions data

http://curiousily.com/
https://github.com/curiousily/Credit-Card-Fraud-Detection-using-Autoencoders-in-Keras

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