2022-2023 / STAT0082-1

Complement to multivariate statistics

Duration

20h Th, 10h Pr, 10h Mon. WS

Number of credits

 Master in mathematics (120 ECTS) (Odd years, not organized in 2022-2023) 4 crédits 
 Master in mathematics (60 ECTS) (Odd years, not organized in 2022-2023) 3 crédits 

Lecturer

Gentiane Haesbroeck

Language(s) of instruction

French language

Organisation and examination

Teaching in the first semester, review in January

Schedule

Schedule online

Units courses prerequisite and corequisite

Prerequisite or corequisite units are presented within each program

Learning unit contents

This course focuses on high-dimensional data analysis.Robust or penalized estimation of the covariance matrix will be considered in details, together with the projection technique tSNE. Depending on the available time, an introduction to multivariate quantiles or to the ICA technique (independent component analysis) will be added.

Learning outcomes of the learning unit

After this course, the mathematician-student will have at his/her disposal several tools useful for analysing high-dimensional data.  

Prerequisite knowledge and skills

This course is aimed for students with a strong mathematical background (bachelor in mathematics).

Planned learning activities and teaching methods

The learning activities consist in ex-cathedra sessions of theory and exercises. Some applications of the software R will also be considered either during practicals or at home.

Mode of delivery (face to face, distance learning, hybrid learning)

Face-to-face course


Additional information:

The practical organisation depends on the number of students.

 

If there are at least 3 students registered for the course and if the sanitary conditions are good, the lectures will be given in a face-to-face way.

 

If the number of students is smaller than 3 or if it is not possible to meet face-to-face,   the lectures will be given by means of a guided reading with some discussion organised face-to-face or in a virtual class.

Recommended or required readings

There are no lecture notes.
Slides and some reference books will be suggested during the course.

Exam(s) in session

Any session

- In-person

written exam ( open-ended questions ) AND oral exam


Additional information:

Exam with an oral part for the theory and a wrfitten part for the exercises and data analyses (with R). 

Work placement(s)

Organizational remarks

There is no assistant attached to this course. Therefore, an active implication of the students in the resolution of the exercises and data analyses is expected! 

Moreover, the course is only given on "odd" academic years (21-22, 23-24,...) . Therefore, it will not be taught this academic year 2022-2023.

Contacts

Gentiane Haesbroeck (G.Haesbroeck@uliege.be)

Association of one or more MOOCs