Data Balancing with Gen AI: Credit Card Fraud Detection
In this 2-hour guided project, you will learn how to leverage Generative AI for data generation to address data imbalance. SecureTrust Financial Services, a...
By Ahmad Varasteh on Coursera
About This Course
In this 2-hour guided project, you will learn how to leverage Generative AI for data generation to address data imbalance. SecureTrust Financial Services, a financial institution, has asked us to help them improve the accuracy of their fraud detection system. The model is a binary classifier, but it's not performing well due to data imbalance. As data scientists, we will employ Generative Adversarial Networks (GANs), a subset of Generative AI, to create synthetic fraudulent transactions that closely resemble real transactions. This approach aims to balance the dataset and enhance the accuracy of the fraud detection model. This guided project is designed for those interested in learning how Generative models can increase model accuracy by generating synthetic data. To make the most of this project, it is recommended to have at least one year of experience using deep learning frameworks such as TensorFlow and Keras in Python.
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Frequently Asked Questions
How much does Data Balancing with Gen AI: Credit Card Fraud Detection cost?
Visit the Data Balancing with Gen AI: Credit Card Fraud Detection course page for current pricing and available discounts.
Who teaches Data Balancing with Gen AI: Credit Card Fraud Detection?
Data Balancing with Gen AI: Credit Card Fraud Detection is taught by Ahmad Varasteh, Coursera.
What skill level is Data Balancing with Gen AI: Credit Card Fraud Detection for?
This course is designed for all levels learners.
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