AScick / Machine_Learning_Project

Bunch of exercises computed during the Machine Learning for Finance course.

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Machine_Learning_Project

Bunch of exercises computed during the Machine Learning for Finance course. Different themes are covered:

  • KNN and OLS for digit identification problem.
  • Logistic Regression.
  • Linear Discriminant Analysis (LDA).
  • Quadratic Discriminant Analysis (QDA).
  • Non-parametric bootstrap.
  • Bootstrap Confidence Intervals.

For the first theme we use files GZ called zip.test and zip.train. For the others, we use the a CSV file called NASA.

I have uploaded two files for the result. One is a Rmarkdown file and the other one is a R script file (Raw_file). I suggest to use the Rmd file converting it into a HTML file. In this way you will be able to watch the graphs and photos.

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Bunch of exercises computed during the Machine Learning for Finance course.

License:MIT License


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