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Machine Learning in Finance

This repository contains the codes (For the assignments) for the "AI in Finance" course taught by prof. Ing. Štefan Lyócsa, PhD. The code covers key topics of machine learning with a focus on case studies in financial markets, credit and profit scoring, hedonic price models for real estate and used cars.

Topics Covered

The codes covers a range of topics, including:

  • Data pre-processing
  • Unsupervised learning methods
  • Predictive modeling using OLS, LASSO, RIDGE, EN, Complete Subset Regressions, Logistic regression, and Random Forest
  • Basic principles of Gradient Boosting, Support Vector Machines, and other methods
  • Handling data-snooping bias, hyper-parameter tuning, bagging and boosting, and ensemble learning.

Req

  • Basic knowledge of R programming
  • R and RStudio installed on your computer

License

This course is licensed under the MIT License. Feel free to use, distribute, and modify the course materials for your own purposes.