Summary
Statistics course organized by VLAG Graduate School.
null
Target group/prerequisites
Participants are expected to have knowledge of basic statistics, e.g. hypothesis testing, correlation and linear regression, and experience using R and RStudio.
Course design
Each day consists of lectures in the morning and practicals using R in the afternoon.
Program topics
Day 1: Data pre-treatment, PCA and PCR Discussion of different data pre-treatment methods e.g. centering, autoscaling, pareto scaling and range scaling. Data exploration using Principal Component Analysis (PCA) and regression using the principal components from PCA in Principal Component Regression, PCR.
Day 2: Modern regression techniques and model validation Discussion of regression methods for high dimensional data: Partial Least Squares (PLS, a technique similar to PCR but with improvements) and regularized regression (ridge/lasso). Ways of assessing model accuracy will also be discussed.
Day 3: Clustering and classification; k-means, hierarchical clustering, LDA and PLS-DA Discussion of cluster analysis: choice of similarity measure, agglomerative methods, divisive methods, k-means & hierarchical clustering.
Date and venue
28, 30 September and 2 October 2026 (on Campus)
Study load
The study load of this course is 1.5 ECTS credits.
Costs
Costs includes material, tea/coffee and lunches.
| Registration type | Fee |
| PhD candidates affiliated with VLAG/WUR * | € 225 |
| All other PhD candidates | € 450 |
| Postdoc / staff from VLAG | € 450 |
| Postdoc / non-profit staff not affiliated with VLAG | € 625 |
| Industry / non academics | € 1200 |
* VLAG/EPS/PE&RC/WASS/WIAS/WIMEK PhD candidates with an approved TSP.
Registration
For registration click here.
After acceptance of your registration, the VLAG Cancellation Conditions for course participants will apply.
Contact
For more information please contact VLAG.