UCL - Etudes

Formations
Premier cycle
Deuxième cycle
Troisième cycle
Certificats (programmes non académiques)
Passerelles
Formation continue
Facultés et entités
Cadre académique
Réforme de Bologne
Accès aux études
Organisation des études
Lexique
Calendrier académique
Règlement des études et examens
Charte pédagogique
Renseignements généraux

Multivariate probabilities ans statistics [STAT2416]
[10h+5h exercises] 2.5 credits

Version française

Printable version

Teacher(s):

Ingrid Van Keilegom

Language:

french

Level:

2nd cycle course

>> Aims
>> Main themes
>> Content and teaching methods
>> Other information (prerequisite, evaluation (assessment methods), course materials recommended readings, ...)
>> Other credits in programs

Aims

By the end of this course, the student should be familiar with the basic concepts for modelling multivariate random experiments and should be able to develop the basic techniques of statistical inference (estimation and hypothesis testing) in these models. In particular, he/she should know the properties of multivariate normal distributions and of other associated distributions, needed for solving inference problems in multivariate populations.

Main themes

- Multivariate random variables, conditional expectation and linear approximation
- Multivariate normal vector
- Multivariate sampling and sampling distributions in relation to the normal law (Wishart, Hotelling)
- General principles of inference (maximum likelihood and likelihood ratio)
- Standard tests for multivariate normal populations (test for a mean, comparison of means, test with linear contraints, test for covariance matrices, ...).

Content and teaching methods

Content :
- Random vectors : joint, marginal and conditional distributions, independence, conditional expectation and covariance, best linear approximation.
- Limit theorems
- Normal vector : general properties and conditional properties
- Estimation for a multivariate normal distribution and sampling distribution of the estimators.
- Hypothesis testing for multivariate normal distributions : linear hypothesis in the marginal and conditional model, confidence intervals.

Method :
The lectures take place during the first five weeks and are followed by two exercise sessions.

Other information (prerequisite, evaluation (assessment methods), course materials recommended readings, ...)

Prerequisites
An elementary course on probability and statistics

Evaluation
The evaluation consists of :
- an oral exam
- a written exam (exercises)

Teaching materials
The course notes will be distributed during the first lecture.

Professor
Ingrid Van Keilegom, tel. : 010/47 43 30,
e-mail : vankeilegom@stat.ucl.ac.be

References :
- Härdle, W. and L. Simar (2003), Applied Multivariate Statistical Analysis, manuscript, Humboldt-Universität zu Berlin, Berlin, to appear at Springer-Verlag, Berlin.
- Johnson, R.A. and D.W. Wichern (1988), Applied Multivariate Statistical Analysis}, Prentice Hall, London.
- Mardia, K.V., Kent, J.T. and J.M. Bibby (1979), Multivariate Analysis, Academic Press, Duluth, London.

Other credits in programs

MATH21/G

Première licence en sciences mathématiques (Général)

(2 credits)

MATH21/S

Première licence en sciences mathématiques (Statistique)

(2 credits)

Mandatory

MATH22/G

Deuxième licence en sciences mathématiques

(2 credits)

STAT2MS

Master en statistique, orientation générale, à finalité spécialisée

(2.5 credits)

STAT3DA/E

diplôme d'études approfondies en statistique (statistique et économétrie)

(2.5 credits)

STAT3DA/M

Diplôme d'études approfondies en statistique (méthodologie de la statistique)

(2.5 credits)

STAT3DA/P

diplôme d'études approfondies en statistique (pratique de la statistique)

(2.5 credits)



Ce site a été conçu en collaboration avec ADCP, ADEF, CIO et SGSI
Responsable : Jean-Louis Marchand - Contact : issec@stat.ucl.ac.be
Dernière mise à jour : 25/05/2005