SeSE: Matrices and Statistics with Applications

This course is organized by the Swedish e-Science Education program (SeSE).

It consists of three parts - self reading, lectures and labs, and project preparation. The lectures and the labs will be given at the Department Information Technology, Uppsala University.

Review material for self study (March 14-18, 2016):

In order to follow the material, the following basic concepts and definitions from Statistics and Linear Algebra have to be reviewed.

Course materials (to be updated)

Information on the project work to be done in order to pass the course with full credit

Detailed time schedule

Date Topic(s) Time
Location
Lecturer
March 21 Introduction. General description of the course 9:00-9:15
2344
MN
Computational Statistics - the statistician's point of view 9:15-11:00
2344
DvR
Regression analysis, statistical concepts 11:15-12:00
2344
DvR
Computational Statistics - the numerical analyst's point of view 13:15-14:00
2344
LE
Least Squares and QR factorization. Normal equations vs QR factorization. 14:15-16:00
2344
LE
     
March 22 Singular value decomposition (SVD). Pseudo-inverses. Applications 9:00-11:00
2344
MN
Regression problems leading to sparse matrices. Sparse matrices - storage formats. 11:15-12:00
2344
MN
Solving least squares problems with sparse matrices: direct and iterative methods. Computing the SVD 13:15-14:00
2344
MN
'Hands-on' session: QR, ill-conditioning, SVD, large scale problems 15:15-17:00
2344
MN
     
March 23 Discussion of the experience from the last computer lab 9:00-9:15
2344
MN
Principal Component Analysis (PCA) 9:15-12:00
2344
DvR
Handling sparse matrices in R and MATLAB. Briefly on Parallel Statistical computing. 13:15-15:00
2344
MN
'Hands-on' session 15:15-17:00
2344
DvR MN
     
March 24 Discussion of the experience from the last computer lab 9:00-9:15
2344
MN
Partial Least Squares (PLS) 9:15-12:00
2344
LE
'Hands-on' session: PCA, PLS 13:15-17:00
2344
LE
     

Recommended books:

  1. James E. Gentle, Computational Statistics, Springer, 2009.
  2. Lars Eldén. Matrix Methods in Data Mining and Pattern Recognition. SIAM, Philadelphia, PA, Philadelphia, PA, USA, 2007.
More books:
  1. Peter Dalgaard, Introductory Statistics with R, Springer, 2002.
  2. W.John Braun, Duncan J. Murdoch, A First Course in Statistical Programmimg with R, Cambridge University Press, 2007.
  3. Geof H. Givens and Jennifer A. Hoeting, Computational Statistics, Wiley, 2005.
  4. Wendy L. Martinez and Angel R. Martinez, Computational Statistics Handbook with MATLAB, Chapman & Hall/CRC, 2002.

Organization issues:
Some instructions how to find us in Uppsala are to be found here .
Suggested hotel to book rooms in Uppsala: Hotel Uppsala .


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Last changed on March 12, 2016.
Mail to: Maya dot Neytcheva "at" it dot uu dot se "