Search for contacts, projects,
courses and publications

Machine Learning

People

Alippi C.

Course director

Adorni G.

Assistant

Butera L.

Assistant

Riva M.

Assistant

Description

COURSE OBJECTIVES

Students will learn how to design linear and nonlinear models for regression, prediction and classification as well as assess their performance in a sound way. At the same time, students will learn how to use deep learning architectures and learning algorithms in key real-world applications.

 

COURSE DESCRIPTION

The course will address the following topics: Supervised learning: linear and nonlinear models for regression and prediction, statistical theory of learning, feature extraction and model selection. Deep learning: architectures including autoencoders, convolutional neural networks and learning procedures. Model performance assessment: cross validation, k-fold cross validation, leave-one-out, bootstrap. Unsupervised learning: K-means clustering, fuzzy C-means, principal component analysis.

 

LEARNING METHODS

Lab sessions will focus on practical aspects and show how to design an appropriate machine learning solution to real-world problems. Basics in Calculus, Probability and Statics are requested

 

EXAMINATION INFORMATION
Assignments and exam.

 

PREREQUISITES

  • Calculus
  • Linear Algebra
  • Probability & Statistics
  • Programming Fundamentals 1
  • Software Atelier 1: Fundamentals of Informatics

 

REFERENCES

  •  T.Hastie, R.Tibshirani, J.Friedman, The elements of statistical learning, Springer
  • Slides and material provided by the professor.

Education