Machine learning

This course covers a wider range of such model based and algorithmic machine learning methods, illustrated in various real-world applications and datasets. At the same time, the theoretical foundation of the methodology is presented is some cases.

  • Linear regression and regularisation (via least squares and maximum likelihood)
  • Bayesian Inference
  • Classification
  • Resampling methods
  • Clustering
  • Non-linear models
  • Tree-based methods
  • Support Vector Machines
  • Random forests
  • Gaussian Processes

If you complete the course successfully, you should be able to:

  • develop an understanding of the process to learn from data
  • be familiar with a wide variety of algorithmic and model based methods to extract information from data
  • apply and evaluate suitable methods to various datasets by model selection and predictive performance evaluation.
  • Rogers S. and Girolami M. A First Course in Machine Learning, Chapman & Hall/CRC Press, second edition (2011) [ISBN 9781498738484].
  • James G., Witten D., Hastie T. and Tibshirani R. An introduction to Statistical Learning: with Applications in R, Springer (2013) [ISBN 9781461471387]

Contact us

FF – Contact Us
Privacy policy
Please check this box if you consent to Forward College processing your data and sending personalised information. You can withdraw consent anytime through our unsubscribe process. Read our privacy policy here.