Machine Learning
An ELLIIT PhD Course at Lund University, Lund, Sweden.
General Information
This course gives an introduction to machine learning, with a focus toward dynamical systems. To a large extent this involves probabilistic modelling in order to be able to solve a wide range of problems.
Contents
- Linear regression
- Linear classification
- Neural networks
- Support vector machines
- Gaussian processes
- Expectation Maximization (EM)
- Clustering
- Approximate inference (VB and EP)
- Introducing graphical models
- Boosting
- MCMC and sampling methods
Organization and Examination
This is an ELLIIT graduate course that is given in order to further strengthen the cooperation between Linköping and Lund.
The course gives 6 hp (you can receive an additional 3 hp by carrying out a project).
The examination consists in a written two day take home exam.
Date and Time
This is an intensive course and it will be given in two parts,
- Part 1. May 25 - May 27, 2011
- Part 2. June 7 - June 10, 2011
Course Literature
 The main book used during the course is, 
     [B] Christopher M. Bishop Pattern
      Recognition and Machine Learning, Springer, 2006.
   
 We will also make use of, 
   [HTF] Trevor Hastie, Robert Tibshirani and Jerome Friedman
	      The
		Elements of Statistical Learning: Data Mining,
		Inference and Prediction, Second edition,
		Springer, 2009.
	      
Prerequisites
Basic undergraduate courses in linear algebra, statistics, signal and systems.Related Courses
System identification, sensor fusion.Exam
Standard 2 day (48 h) exam. The exam period is week 34 - 35 (August 22 - September 4). The exam can be collected from Eva Westin at the Department of Automatic Control.Contact Persons
    Dr Thomas
    Schön, tel +46 13 281373, email: schon_at_isy.liu.se.
    Prof. Bo
    Bernhardsson, tel +46 46 222 87 86, email:
    bob_at_control.lth.se. 
    Prof. Rolf
    Johansson., tel +46 46 222 87 91, email:
    Rolf.Johansson_at_control.lth.se. 
  
 
Associate Professor in Automatic Control
- Phone:
- +46 13 281373
- Mobile (private):
- +46 735 933 887
- E-mail:
- schon_at_isy.liu.se
- Address:
- Dept. of Electrical Engineering
- Linköping University
- SE-581 83 Linköping
- Sweden
- Visiting Address:
- Campus Valla
- Building B
- Room 2A:NNN (in the A corridor on the ground floor between entrance 25 and 27)
            Informationsansvarig: Thomas Schön
            Senast uppdaterad: 2012-10-13
          
 LiU Homepage
 LiU Homepage 
          
	   
	   
        