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Archived teaching schedules 2014–2015
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MTTS1 Dimensionality reduction and visualization 5 ECTS
Periods
Period I Period II Period II Period IV
Language of instruction
English
Type or level of studies
Advanced studies
Course unit descriptions in the curriculum
Degree Programme in Mathematics and Statistics
School of Information Sciences

Learning outcomes

After the course, the student will be aware of main approaches and issues in dimensionality reduction and visualization, will be aware of a variety of methods applicable to the tasks, and will be able to apply some of the basic techniques.

General description

Properties of high-dim data; Feature Selection; Linear feature extraction methods such as principal component analysis and linear discriminant analysis; Graphical excellence; Human perception; Nonlinear dimensionality reduction methods such as the self-organizing map and Laplacian embedding; Neighbor embedding methods such as stochastic neighbor embedding and the neighbor retrieval visualizer; Graph visualization; Graph layout methods such as LinLog.

Enrolment for University Studies

Enroll by sending e-mail to the lecturer (jaakko.peltonen@uta.fi) by 6.1.2015 at the latest. After this, participate to the first lecture.

Teachers

Jaakko Peltonen, Teacher responsible
jaakko.peltonen[ät]uta.fi

Homepage URL

Teaching

Lectures
Mon 12-Jan-2015 - 11-May-2015 weekly at 14-16, Pinni B0020, no lectures on mondays 9-Mar or 6-Apr

Evaluation

Numeric 1-5.

Further information

Modes of study

- Lectures
- Exercises (independent work)
- Exam

Recommended preceding studies

Basic mathematics and probability courses; basic competence in a scientific programming language such as matlab or R. 

Other

Course can be an optional course in
- Advanced Studies in Statistics
- Advanced Studies in Computational Methods and Programming
- M.Sc. programme in Algorithmics

Further information on including this course in advanced studies, contact your study advisor or professor.